A continuous glucose monitoring system may utilize externally sourced information regarding the physiological state and ambient environment of its user for externally calibrating sensor glucose measurements. Externally sourced factory calibration information may be utilized, where the information is generated by comparing metrics obtained from the data used to generate the sensor's glucose sensing algorithm to similar data obtained from each batch of sensors to be used with the algorithm in the future. The output sensor glucose value of a glucose sensor may also be estimated by analytically optimizing input sensor signals to accurately correct for changes in sensitivity, run-in time, glucose current dips, and other variable sensor wear effects. Correction actors, fusion algorithms, eis, and advanced ASICs may be used to implement the foregoing, thereby achieving the goal of improved accuracy and reliability without the need for blood-glucose calibration, and providing a calibration-free, or near calibration-free, sensor.
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10. A system comprising:
a glucose sensor configured to measure a level of glucose in a body of a user, the glucose sensor comprising:
a working electrode;
physical sensor electronics configured to measure electrode current (Isig) signals for the working electrode; and
a microcontroller configured to:
access the Isig signals;
access Electrochemical Impedance Spectroscopy (eis) related data for the working electrode, the eis-related data generated by an eis procedure;
based on the Isig signals, the eis-related data, and a plurality of calibration-free sensor glucose (sg)-predictive models, calculate a respective sg value for each of the sg-predictive models;
fuse the respective sg values for the sg-predictive models to calculate a single, fused sg value;
calculate a modification factor based on a value of a physiological calibration factor (PCF), a value of an environmental calibration factor (ECF), or both;
determine whether the calculated modification factor is valid; and
in a case where the modification factor is determined to be valid:
calculate a single, calibrated, fused sg value based on the modification factor and the single, fused sg value;
perform error detection diagnostics on the calibrated, fused sg value to determine whether a correctable error exists in the calibrated, fused sg value;
in a case where it is determined that the correctable error exists, correct the correctable error; and
cause a display screen to display a corrected, calibrated, fused sg value to the user,
wherein the PCF is based on status information of an activity level, a heart rate, a blood pressure, and a body temperature of the user.
1. A method for external calibration of a glucose sensor used for measuring a level of glucose in a body of a user, the glucose sensor including physical sensor electronics, a microcontroller, and a working electrode, the method comprising:
accessing electrode current (Isig) signals for the working electrode, the Isig signals being measured by the physical sensor electronics;
accessing Electrochemical Impedance Spectroscopy (eis) related data for the working electrode, the eis-related data generated by an eis procedure;
based on the Isig signals and the eis-related data and a plurality of calibration-free sensor glucose (sg)-predictive models, calculating, by the microcontroller, a respective sg value for each of the sg-predictive models;
fusing, by the microcontroller, the respective sg values for the sg-predictive models to calculate a single, fused sg value;
calculating, by the microcontroller, a modification factor based on a value of a physiological calibration factor (PCF), a value of an environmental calibration factor (ECF), or both;
determining, by the microcontroller, whether the calculated modification factor is valid; and
in a case where the modification factor is determined to be valid:
calculating, by the microcontroller, a single, calibrated, fused sg value based on the modification factor and the single, fused sg value;
performing, by the microcontroller, error detection diagnostics on the calibrated, fused sg value to determine whether a correctable error exists in the calibrated, fused sg value;
in a case where it is determined that the correctable error exists, correcting, by the microcontroller, the correctable error; and
displaying a corrected, calibrated, fused sg value to the user,
wherein the PCF is based on status information of an activity level, a heart rate, a blood pressure, and a body temperature of the user.
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This application is a divisional application of U.S. patent application Ser. No. 16/117,466, filed Aug. 30, 2018, now U.S. Pat. No. 11,445,951, which claims the benefit of the filing date of U.S. Provisional Application Ser. No. 62/558,248, filed Sep. 13, 2017, which are incorporated herein by reference in their entirety.
The present technology is generally related to sensor technology, including sensors used for sensing a variety of physiological parameters, e.g., glucose concentration, and to enabling elimination of the need for blood glucose (BG) calibration in calibration-free or near-calibration-free glucose sensing systems, devices, and methods.
Over the years, a variety of sensors have been developed for detecting and/or quantifying specific agents or compositions in a patient's blood, which enable patients and medical personnel to monitor physiological conditions within the patient's body. Illustratively, subjects may wish to monitor blood glucose levels in a subject's body on a continuing basis. Thus, glucose sensors have been developed for use in obtaining an indication of blood glucose levels in a diabetic patient. Such readings are useful in monitoring and/or adjusting a treatment regimen which typically includes the regular administration of insulin to the patient.
Presently, a patient can measure his/her blood glucose (BG) using a BG measurement device (i.e., glucose meter), such as a test strip meter, a continuous glucose measurement system (or a continuous glucose monitor), or a hospital hemacue. BG measurement devices use various methods to measure the BG level of a patient, such as a sample of the patient's blood, a sensor in contact with a bodily fluid, an optical sensor, an enzymatic sensor, or a fluorescent sensor. When the BG measurement device has generated a BG measurement, the measurement is displayed on the BG measurement device.
Current continuous glucose measurement systems include subcutaneous (or short-term) sensors and implantable (or long-term) sensors. Sensors have been applied in a telemetered characteristic monitor system. As described, e.g., in commonly-assigned U.S. Pat. No. 6,809,653, the entire contents of which are incorporated herein by reference, a telemetered system using an electrochemical sensor includes a remotely located data receiving device, a sensor for producing signals indicative of a characteristic of a user, and a transmitter device for processing signals received from the sensor and for wirelessly transmitting the processed signals to the remotely located data receiving device. The data receiving device may be a characteristic monitor, a data receiver that provides data to another device, an RF programmer, a medication delivery device (such as an infusion pump), or the like.
Regardless of whether the data receiving device (e.g., a glucose monitor), the transmitter device, and the sensor (e.g., a glucose sensor) communicate wirelessly or via an electrical wire connection, a characteristic monitoring system of the type described above is of practical use only after it has been calibrated based on the unique characteristics of the individual user. According to the current state of the art, the user is required to externally calibrate the sensor. More specifically, and in connection with the illustrative example of a diabetic patient, the latter is required to utilize a finger-stick blood glucose meter reading an average of two-four times per day for the duration that the characteristic monitor system is used. Each time, blood is drawn from the user's finger and analyzed by the blood glucose meter to provide a real-time blood sugar level for the user. The user then inputs this data into the glucose monitor as the user's current blood sugar level which is used to calibrate the glucose monitoring system.
Such external calibrations, however, are disadvantageous for various reasons. For example, blood glucose meters are not perfectly accurate and include inherent margins of error. Moreover, even if completely accurate, blood glucose meters are susceptible to improper use; for example, if the user has handled candy or other sugar-containing substance immediately prior to performing the finger stick, with some of the sugar sticking to the user's fingers, the blood sugar analysis will result in an inaccurate blood sugar level indication. Furthermore, there is a cost, not to mention pain and discomfort, associated with each application of the finger stick.
The current state of the art in continuous glucose monitoring (CGM) is largely adjunctive, meaning that the readings provided by a CGM device (including, e.g., an implantable or subcutaneous sensor) cannot be used without a reference value in order to make a clinical decision. The reference value, in turn, must be obtained from a finger stick using, e.g., a BG meter. The reference value is needed because there is a limited amount of information that is available from the sensor/sensing component. Specifically, the only pieces of information that are currently provided by the sensing component for processing are the raw sensor value (i.e., the sensor current or Isig) and the counter voltage. Therefore, during analysis, if it appears that the raw sensor signal is abnormal (e.g., if the signal is decreasing), the only way one can distinguish between a sensor failure and a physiological change within the user/patient (i.e., glucose level changing in the body) is by acquiring a reference glucose value via a finger stick. As is known, the reference finger stick is also used for calibrating the sensor.
The art has searched for ways to eliminate or, at the very least, minimize, the number of finger sticks that are necessary for calibration and for assessing sensor health. However, given the number and level of complexity of the multitude of sensor failure modes, no satisfactory solution has been found. At most, diagnostics have been developed that are based on either direct assessment of the Isig, or on comparison of multiple Isigs, e.g., from redundant and/or orthogonally redundant, sensors and/or electrodes. In either case, because the Isig tracks the level of glucose in the body, by definition, it is not analyte independent. As such, by itself, the Isig is not a reliable source of information for sensor diagnostics, nor is it a reliable predictor for continued sensor performance.
Another limitation that has existed in the art thus far has been the lack of sensor electronics that can not only run the sensor, but also perform real-time sensor and electrode diagnostics, and do so for redundant electrodes, all while managing the sensor's power supply. To be sure, the concept of electrode redundancy has been around for quite some time. However, up until now, there has been little to no success in using electrode redundancy not only for obtaining more than one reading at a time, but also for assessing the relative health of the redundant electrodes, the overall reliability of the sensor, and the frequency of the need, if at all, for calibration reference values.
The art has also searched for more accurate and reliable means for providing self-calibrating sensors, and for performing sensor diagnostics by developing a variety of circuit models. In such models, an attempt is generally made to correlate circuit elements to parameters that may be used in intelligent diagnostics, gross failure analysis, and real-time self-calibrations. However, most such models have had limited success thus far.
In one aspect, the present disclosure provides a method for external calibration of a glucose sensor used for measuring the level of glucose in the body of a user, the sensor including physical sensor electronics, a microcontroller, and a working electrode, the method comprising periodically measuring, by the physical sensor electronics, electrode current (Isig) signals for the working electrode; performing, by the microcontroller, an Electrochemical Impedance Spectroscopy (EIS) procedure to generate EIS-related data for the working electrode; based on the Isig signals and EIS-related data and a plurality of calibration-free sensor glucose (SG)-predictive models, calculating, by the microcontroller, a respective SG value for each of the SG-predictive models; calculating, by the microcontroller, a modification factor based on respective values of a physiological calibration factor (PCF), an environmental calibration factor (ECF), or both, and determining, by the microcontroller, whether the calculated modification factor is valid; when the modification factor is valid, calculating, by the microcontroller, a calibrated respective SG value for each of the SG-predictive models based on the modification factor and the respective SG values; fusing, by the microcontroller, the calibrated respective SG values to calculate a single, calibrated, fused SG value; performing, by the microcontroller, error detection diagnostics on the calibrated, fused SG value to determine whether a correctable error exists in the calibrated, fused, SG value; correcting, by the microcontroller, the correctable error; and displaying a corrected, calibrated, fused SG value to the user.
In another aspect, the disclosure provides a method for external calibration of a glucose sensor used for measuring the level of glucose in the body of a user, the sensor including physical sensor electronics, a microcontroller, and a working electrode, the method comprising periodically measuring, by the physical sensor electronics, electrode current (Isig) signals for the working electrode; performing, by the microcontroller, an Electrochemical Impedance Spectroscopy (EIS) procedure to generate EIS-related data for the working electrode; based on the Isig signals and EIS-related data and a plurality of calibration-free sensor glucose (SG)-predictive models, calculating, by the microcontroller, a respective SG value for each of the SG-predictive models; fusing, by the microcontroller, the respective SG values to calculate a single, fused SG value; calculating, by the microcontroller, a modification factor based on respective values of a physiological calibration factor (PCF), an environmental calibration factor (ECF), or both, and determining, by the microcontroller, whether the calculated modification factor is valid; when the modification factor is valid, calculating, by the microcontroller, a single, calibrated, fused SG value based on the modification factor and the single, fused SG value; performing, by the microcontroller, error detection diagnostics on the calibrated, fused SG value to determine whether a correctable error exists in the calibrated, fused, SG value; correcting, by the microcontroller, the correctable error; and displaying a corrected, calibrated, fused SG value to the user.
In a further aspect, the disclosure provides a method for using factory calibration to correct for manufacturing batch variations in one or more sensor parameters of a glucose sensor used for measuring the level of glucose in the body of a user, the sensor including physical sensor electronics, a microcontroller, and a working electrode, the method comprising periodically measuring, by the physical sensor electronics, electrode current (Isig) signal values for the working electrode; performing, by the microcontroller, an Electrochemical Impedance Spectroscopy (EIS) procedure to generate values of one or more EIS-related parameters for the working electrode; calculating, by the microcontroller, values of counter voltage (Vcntr) for the sensor; applying, by the microcontroller, a factory calibration factor to the Isig, EIS parameter, and Vcntr values to generate respective modified Isig, EIS parameter, and Vcntr values; based on the modified Isig, EIS parameter, and Vcntr values and a plurality of calibration-free sensor glucose (SG)-predictive models, calculating, by the microcontroller, a respective SG value for each of the SG-predictive models; fusing, by the microcontroller, the respective SG values to calculate a single, fused SG value; performing, by the microcontroller, error detection diagnostics on the calibrated, fused SG value to determine whether a correctable error exists in the calibrated, fused, SG value; correcting, by the microcontroller, the correctable error; and displaying a corrected, calibrated, fused SG value to the user.
In yet another aspect, the disclosure provides a method of optimizing glucose sensor estimation for a glucose sensor used for measuring the level of glucose in the body of a user, the sensor including physical sensor electronics, a microcontroller, and a working electrode, the method comprising periodically measuring, by the physical sensor electronics, electrode current (Isig) signals for the working electrode; performing, by the microcontroller, an Electrochemical Impedance Spectroscopy (EIS) procedure to generate EIS-related data for the working electrode; calculating, by the microcontroller, an adjusted calibration factor for the sensor based on the EIS-related data; calculating, by the microcontroller, an adjusted offset value for the sensor based on at least one of a stabilization time adjustment and a non-linear sensor response adjustment; and calculating, by the microcontroller, an optimized measured glucose value (SG) based on the adjusted calibration factor and the adjusted offset value, wherein SG=(adjusted calibration factor)×(Isig+adjusted offset value).
The details of one or more aspects of the disclosure are set forth in the accompanying drawings and the description below. Other features, objects, and advantages of the techniques described in this disclosure will be apparent from the description and drawings, and from the claims.
A detailed description of embodiments of the invention will be made with reference to the accompanying drawings, wherein like numerals designate corresponding parts in the figures.
In the following description, reference is made to the accompanying drawings which form a part hereof and which illustrate several embodiments of the present inventions. It is understood that other embodiments may be utilized, and structural and operational changes may be made without departing from the scope of the present inventions.
The inventions herein are described below with reference to flowchart illustrations of methods, systems, devices, apparatus, and programming and computer program products. It will be understood that each block of the flowchart illustrations, and combinations of blocks in the flowchart illustrations, can be implemented by programing instructions, including computer program instructions (as can any menu screens described in the figures). These computer program instructions may be loaded onto a computer or other programmable data processing apparatus (such as a controller, microcontroller, or processor in a sensor electronics device) to produce a machine, such that the instructions which execute on the computer or other programmable data processing apparatus create instructions for implementing the functions specified in the flowchart block or blocks. These computer program instructions may also be stored in a computer-readable memory that can direct a computer or other programmable data processing apparatus to function in a particular manner, such that the instructions stored in the computer-readable memory produce an article of manufacture including instructions which implement the function specified in the flowchart block or blocks. The computer program instructions may also be loaded onto a computer or other programmable data processing apparatus to cause a series of operational steps to be performed on the computer or other programmable apparatus to produce a computer implemented process such that the instructions which execute on the computer or other programmable apparatus provide steps for implementing the functions specified in the flowchart block or blocks, and/or menus presented herein. Programming instructions may also be stored in and/or implemented via electronic circuitry, including integrated circuits (ICs) and Application Specific Integrated Circuits (ASICs) used in conjunction with sensor devices, apparatuses, and systems.
In particular embodiments, the subcutaneous sensor set 10 facilitates accurate placement of a flexible thin film electrochemical sensor 12 of the type used for monitoring specific blood parameters representative of a user's condition. The sensor 12 monitors glucose levels in the body and may be used in conjunction with automated or semi-automated medication infusion pumps of the external or implantable type as described, e.g., in U.S. Pat. Nos. 4,562,751; 4,678,408; 4,685,903 or 4,573,994, to control delivery of insulin to a diabetic patient.
Particular embodiments of the flexible electrochemical sensor 12 are constructed in accordance with thin film mask techniques to include elongated thin film conductors embedded or encased between layers of a selected insulative material such as polyimide film or sheet, and membranes. The sensor electrodes 20 at a tip end of the sensing portion 18 are exposed through one of the insulative layers for direct contact with patient blood or other body fluids, when the sensing portion 18 (or active portion) of the sensor 12 is subcutaneously placed at an insertion site. The sensing portion 18 is joined to a connection portion 24 that terminates in conductive contact pads, or the like, which are also exposed through one of the insulative layers. In alternative embodiments, other types of implantable sensors, such as chemical based, optical based, or the like, may be used.
As is known in the art, the connection portion 24 and the contact pads are generally adapted for a direct wired electrical connection to a suitable monitor or sensor electronics device 100 for monitoring a user's condition in response to signals derived from the sensor electrodes 20. Further description of flexible thin film sensors of this general type are be found in U.S. Pat. No. 5,391,250, entitled METHOD OF FABRICATING THIN FILM SENSORS, which is herein incorporated by reference. The connection portion 24 may be conveniently connected electrically to the monitor or sensor electronics device 100 or by a connector block 28 (or the like) as shown and described in U.S. Pat. No. 5,482,473, entitled FLEX CIRCUIT CONNECTOR, which is also herein incorporated by reference. Thus, in accordance with embodiments of the present invention, subcutaneous sensor sets 10 may be configured or formed to work with either a wired or a wireless characteristic monitor system.
The sensor electrodes 20 may be used in a variety of sensing applications and may be configured in a variety of ways. For example, the sensor electrodes 20 may be used in physiological parameter sensing applications in which some type of biomolecule is used as a catalytic agent. For example, the sensor electrodes 20 may be used in a glucose and oxygen sensor having a glucose oxidase (GOx) enzyme catalyzing a reaction with the sensor electrodes 20. The sensor electrodes 20, along with a biomolecule or some other catalytic agent, may be placed in a human body in a vascular or non-vascular environment. For example, the sensor electrodes 20 and biomolecule may be placed in a vein and be subjected to a blood stream or may be placed in a subcutaneous or peritoneal region of the human body.
The monitor 100 may also be referred to as a sensor electronics device 100. The monitor 100 may include a power source 110, a sensor interface 122, processing electronics 124, and data formatting electronics 128. The monitor 100 may be coupled to the sensor set 10 by a cable 102 through a connector that is electrically coupled to the connector block 28 of the connection portion 24. In an alternative embodiment, the cable may be omitted. In this embodiment of the invention, the monitor 100 may include an appropriate connector for direct connection to the connection portion 104 of the sensor set 10. The sensor set 10 may be modified to have the connector portion 104 positioned at a different location, e.g., on top of the sensor set to facilitate placement of the monitor 100 over the sensor set.
In embodiments of the invention, the sensor interface 122, the processing electronics 124, and the data formatting electronics 128 are formed as separate semiconductor chips, however, alternative embodiments may combine the various semiconductor chips into a single, or multiple customized semiconductor chips. The sensor interface 122 connects with the cable 102 that is connected with the sensor set 10.
The power source 110 may be a battery. The battery can include three series silver oxide 357 battery cells. In alternative embodiments, different battery chemistries may be utilized, such as lithium-based chemistries, alkaline batteries, nickel metalhydride, or the like, and a different number of batteries may be used. The monitor 100 provides power to the sensor set via the power source 110, through the cable 102 and cable connector 104. In an embodiment of the invention, the power is a voltage provided to the sensor set 10. In an embodiment of the invention, the power is a current provided to the sensor set 10. In an embodiment of the invention, the power is a voltage provided at a specific voltage to the sensor set 10.
The sensor electrodes 310 may be used in a variety of sensing applications and may be configured in a variety of ways. For example, the sensor electrodes 310 may be used in physiological parameter sensing applications in which some type of biomolecule is used as a catalytic agent. For example, the sensor electrodes 310 may be used in a glucose and oxygen sensor having a glucose oxidase (GOx) enzyme catalyzing a reaction with the sensor electrodes 310. The sensor electrodes 310, along with a biomolecule or some other catalytic agent, may be placed in a human body in a vascular or non-vascular environment. For example, the sensor electrodes 310 and biomolecule may be placed in a vein and be subjected to a blood stream.
The sensor 355 creates a sensor signal indicative of a concentration of a physiological characteristic being measured. For example, the sensor signal may be indicative of a blood glucose reading. In an embodiment of the invention utilizing subcutaneous sensors, the sensor signal may represent a level of hydrogen peroxide in a subject. In an embodiment of the invention where blood or cranial sensors are utilized, the amount of oxygen is being measured by the sensor and is represented by the sensor signal. In an embodiment of the invention utilizing implantable or long-term sensors, the sensor signal may represent a level of oxygen in the subject. The sensor signal is measured at the working electrode 375. In an embodiment of the invention, the sensor signal may be a current measured at the working electrode. In an embodiment of the invention, the sensor signal may be a voltage measured at the working electrode.
The signal processor 390 receives the sensor signal (e.g., a measured current or voltage) after the sensor signal is measured at the sensor 355 (e.g., the working electrode). The signal processor 390 processes the sensor signal and generates a processed sensor signal. The measurement processor 395 receives the processed sensor signal and calibrates the processed sensor signal utilizing reference values. In an embodiment of the invention, the reference values are stored in a reference memory and provided to the measurement processor 395. The measurement processor 395 generates sensor measurements. The sensor measurements may be stored in a measurement memory (not shown). The sensor measurements may be sent to a display/transmission device to be either displayed on a display in a housing with the sensor electronics or transmitted to an external device.
The sensor electronics device 360 may be a monitor which includes a display to display physiological characteristics readings. The sensor electronics device 360 may also be installed in a desktop computer, a pager, a television including communications capabilities, a laptop computer, a server, a network computer, a personal digital assistant (PDA), a portable telephone including computer functions, an infusion pump including a display, a glucose sensor including a display, and/or a combination infusion pump/glucose sensor. The sensor electronics device 360 may be housed in a blackberry, a network device, a home network device, or an appliance connected to a home network.
The microcontroller 410 includes software program code, which when executed, or programmable logic which, causes the microcontroller 410 to transmit a signal to the DAC 420, where the signal is representative of a voltage level or value that is to be applied to the sensor 355. The DAC 420 receives the signal and generates the voltage value at the level instructed by the microcontroller 410. In embodiments of the invention, the microcontroller 410 may change the representation of the voltage level in the signal frequently or infrequently. Illustratively, the signal from the microcontroller 410 may instruct the DAC 420 to apply a first voltage value for one second and a second voltage value for two seconds.
The sensor 355 may receive the voltage level or value. In an embodiment of the invention, the counter electrode 365 may receive the output of an operational amplifier which has as inputs the reference voltage and the voltage value from the DAC 420. The application of the voltage level causes the sensor 355 to create a sensor signal indicative of a concentration of a physiological characteristic being measured. In an embodiment of the invention, the microcontroller 410 may measure the sensor signal (e.g., a current value) from the working electrode. Illustratively, a sensor signal measurement circuit 431 may measure the sensor signal. In an embodiment of the invention, the sensor signal measurement circuit 431 may include a resistor and the current may be passed through the resistor to measure the value of the sensor signal. In an embodiment of the invention, the sensor signal may be a current level signal and the sensor signal measurement circuit 431 may be a current-to-frequency (I/F) converter 430. The current-to-frequency converter 430 may measure the sensor signal in terms of a current reading, convert it to a frequency-based sensor signal, and transmit the frequency-based sensor signal to the microcontroller 410. In embodiments of the invention, the microcontroller 410 may be able to receive frequency-based sensor signals easier than non-frequency-based sensor signals. The microcontroller 410 receives the sensor signal, whether frequency-based or non-frequency-based, and determines a value for the physiological characteristic of a subject, such as a blood glucose level. The microcontroller 410 may include program code, which when executed or run, is able to receive the sensor signal and convert the sensor signal to a physiological characteristic value. In an embodiment of the invention, the microcontroller 410 may convert the sensor signal to a blood glucose level. In an embodiment of the invention, the microcontroller 410 may utilize measurements stored within an internal memory in order to determine the blood glucose level of the subject. In an embodiment of the invention, the microcontroller 410 may utilize measurements stored within a memory external to the microcontroller 410 to assist in determining the blood glucose level of the subject.
After the physiological characteristic value is determined by the microcontroller 410, the microcontroller 410 may store measurements of the physiological characteristic values for a number of time periods. For example, a blood glucose value may be sent to the microcontroller 410 from the sensor every second or five seconds, and the microcontroller may save sensor measurements for five minutes or ten minutes of BG readings. The microcontroller 410 may transfer the measurements of the physiological characteristic values to a display on the sensor electronics device 360. For example, the sensor electronics device 360 may be a monitor which includes a display that provides a blood glucose reading for a subject. In an embodiment of the invention, the microcontroller 410 may transfer the measurements of the physiological characteristic values to an output interface of the microcontroller 410. The output interface of the microcontroller 410 may transfer the measurements of the physiological characteristic values, e.g., blood glucose values, to an external device, e.g., an infusion pump, a combined infusion pump/glucose meter, a computer, a personal digital assistant, a pager, a network appliance, a server, a cellular phone, or any computing device.
In a long-term sensor embodiment, where a glucose oxidase (GOx) enzyme is used as a catalytic agent in a sensor, current may flow from the counter electrode 536 to a working electrode 534 only if there is oxygen in the vicinity of the enzyme and the sensor electrodes 510. Illustratively, if the voltage set at the reference electrode 532 is maintained at about 0.5 volts, the amount of current flowing from the counter electrode 536 to a working electrode 534 has a fairly linear relationship with unity slope to the amount of oxygen present in the area surrounding the enzyme and the electrodes. Thus, increased accuracy in determining an amount of oxygen in the blood may be achieved by maintaining the reference electrode 532 at about 0.5 volts and utilizing this region of the current-voltage curve for varying levels of blood oxygen. Different embodiments of the present invention may utilize different sensors having biomolecules other than a glucose oxidase enzyme and may, therefore, have voltages other than 0.5 volts set at the reference electrode.
As discussed above, during initial implantation or insertion of the sensor 510, the sensor 510 may provide inaccurate readings due to the adjusting of the subject to the sensor and also electrochemical byproducts caused by the catalyst utilized in the sensor. A stabilization period is needed for many sensors in order for the sensor 510 to provide accurate readings of the physiological parameter of the subject. During the stabilization period, the sensor 510 does not provide accurate blood glucose measurements. Users and manufacturers of the sensors may desire to improve the stabilization timeframe for the sensor so that the sensors can be utilized quickly after insertion into the subject's body or a subcutaneous layer of the subject.
In previous sensor electrode systems, the stabilization period or timeframe was one hour to three hours. In order to decrease the stabilization period or timeframe and increase the timeliness of accuracy of the sensor, a sensor (or electrodes of a sensor) may be subjected to a number of pulses rather than the application of one pulse followed by the application of another voltage.
The repeated application of the voltage and the non-application of the voltage results in the sensor (and thus the electrodes) being subjected to an anodic-cathodic cycle. The anodic-cathodic cycle results in the reduction of electrochemical byproducts which are generated by a patient's body reacting to the insertion of the sensor or the implanting of the sensor. In an embodiment of the invention, the electrochemical byproducts cause generation of a background current, which results in inaccurate measurements of the physiological parameter of the subject. In an embodiment of the invention, the electrochemical byproduct may be eliminated. Under other operating conditions, the electrochemical byproducts may be reduced or significantly reduced. A successful stabilization method results in the anodic-cathodic cycle reaching equilibrium, electrochemical byproducts being significantly reduced, and background current being minimized.
In an embodiment of the invention, the first voltage being applied to the electrode of the sensor may be a positive voltage. In an embodiment of the invention, the first voltage being applied may be a negative voltage. In an embodiment of the invention, the first voltage may be applied to a working electrode. In an embodiment of the invention, the first voltage may be applied to the counter electrode or the reference electrode.
In embodiments of the invention, the duration of the voltage pulse and the non-application of voltage may be equal, e.g., such as three minutes each. In embodiments of the invention, the duration of the voltage application or voltage pulse may be different values, e.g., the first time and the second time may be different. In an embodiment of the invention, the first time period may be five minutes and the waiting period may be two minutes. In an embodiment of the invention, the first time period may be two minutes and the waiting period (or second timeframe) may be five minutes. In other words, the duration for the application of the first voltage may be two minutes and there may be no voltage applied for five minutes. This timeframe is only meant to be illustrative and should not be limiting. For example, a first timeframe may be two, three, five or ten minutes and the second timeframe may be five minutes, ten minutes, twenty minutes, or the like. The timeframes (e.g., the first time and the second time) may depend on unique characteristics of different electrodes, the sensors, and/or the patient's physiological characteristics.
In embodiments of the invention, more or less than three pulses may be utilized to stabilize the glucose sensor. In other words, the number of iterations may be greater than 3 or less than three. For example, four voltage pulses (e.g., a high voltage followed by no voltage) may be applied to one of the electrodes or six voltage pulses may be applied to one of the electrodes.
Illustratively, three consecutive pulses of 1.07 volts (followed by respective waiting periods) may be sufficient for a sensor implanted subcutaneously. In an embodiment of the invention, three consecutive voltage pulses of 0.7 volts may be utilized. The three consecutive pulses may have a higher or lower voltage value, either negative or positive, for a sensor implanted in blood or cranial fluid, e.g., the long-term or permanent sensors. In addition, more than three pulses (e.g., five, eight, twelve) may be utilized to create the anodic-cathodic cycling between anodic and cathodic currents in any of the subcutaneous, blood, or cranial fluid sensors.
In an embodiment of the invention, the first voltage may be 0.535 volts applied for five minutes, the second voltage may be 1.070 volts applied for two minutes, the first voltage of 0.535 volts may be applied for five minutes, the second voltage of 1.070 volts may be applied for two minutes, the first voltage of 0.535 volts may be applied for five minutes, and the second voltage of 1.070 volts may be applied for two minutes. In other words, in this embodiment, there are three iterations of the voltage pulsing scheme. The pulsing methodology may be changed in that the second timeframe, e.g., the timeframe of the application of the second voltage may be lengthened from two minutes to five minutes, ten minutes, fifteen minutes, or twenty minutes. In addition, after the three iterations are applied in this embodiment of the invention, a nominal working voltage of 0.535 volts may be applied.
The 1.070 and 0.535 volts are illustrative values. Other voltage values may be selected based on a variety of factors. These factors may include the type of enzyme utilized in the sensor, the membranes utilized in the sensor, the operating period of the sensor, the length of the pulse, and/or the magnitude of the pulse. Under certain operating conditions, the first voltage may be in a range of 1.00 to 1.09 volts and the second voltage may be in a range of 0.510 to 0.565 volts. In other operating embodiments, the ranges that bracket the first voltage and the second voltage may have a higher range, e.g., 0.3 volts, 0.6 volts, 0.9 volts, depending on the voltage sensitivity of the electrode in the sensor. Under other operating conditions, the voltage may be in a range of 0.8 volts to 1.34 volts and the other voltage may be in a range of 0.335 to 0.735. Under other operating conditions, the range of the higher voltage may be smaller than the range of the lower voltage. Illustratively, the higher voltage may be in a range of 0.9 to 1.09 volts and the lower voltage may be in a range of 0.235 to 0.835 volts.
In an embodiment of the invention, the first voltage and the second voltage may be positive voltages, or alternatively in other embodiments of the invention, negative voltages. In an embodiment of the invention, the first voltage may be positive, and the second voltage may be negative, or alternatively, the first voltage may be negative and the second voltage may be positive. The first voltage may be different voltage levels for each of the iterations. In an embodiment of the invention, the first voltage may be a D.C. constant voltage. In other embodiments of the invention, the first voltage may be a ramp voltage, a sinusoid-shaped voltage, a stepped voltage, or other commonly utilized voltage waveforms. In an embodiment of the invention, the second voltage may be a D.C. constant voltage, a ramp voltage, a sinusoid-shaped voltage, a stepped voltage, or other commonly utilized voltage waveforms. In an embodiment of the invention, the first voltage or the second voltage may be an AC signal riding on a DC waveform. In an embodiment of the invention, the first voltage may be one type of voltage, e.g., a ramp voltage, and the second voltage may be a second type of voltage, e.g., a sinusoid-shaped voltage. In an embodiment of the invention, the first voltage (or the second voltage) may have different waveform shapes for each of the iterations. For example, if there are three cycles in a stabilization method, in a first cycle, the first voltage may be a ramp voltage, in the second cycle, the first voltage may be a constant voltage, and in the third cycle, the first voltage may be a sinusoidal voltage.
In an embodiment of the invention, a duration of the first timeframe and a duration of the second timeframe may have the same value, or alternatively, the duration of the first timeframe and the second timeframe may have different values. For example, the duration of the first timeframe may be two minutes and the duration of the second timeframe may be five minutes and the number of iterations may be three. As discussed above, the stabilization method may include a number of iterations. In embodiments of the invention, during different iterations of the stabilization method, the duration of each of the first timeframes may change and the duration of each of the second timeframes may change. Illustratively, during the first iteration of the anodic-cathodic cycling, the first timeframe may be 2 minutes and the second timeframe may be 5 minutes. During the second iteration, the first timeframe may be 1 minute, and the second timeframe may be 3 minutes. During the third iteration, the first timeframe may be 3 minutes and the second timeframe may be 10 minutes.
In an embodiment of the invention, a first voltage of 0.535 volts is applied to an electrode in a sensor for two minutes to initiate an anodic cycle, then a second voltage of 1.07 volts is applied to the electrode for five minutes to initiate a cathodic cycle. The first voltage of 0.535 volts is then applied again for two minutes to initiate the anodic cycle and a second voltage of 1.07 volts is applied to the sensor for five minutes. In a third iteration, 0.535 volts is applied for two minutes to initiate the anodic cycle and then 1.07 volts is applied for five minutes. The voltage applied to the sensor is then 0.535 during the actual working timeframe of the sensor, e.g., when the sensor provides readings of a physiological characteristic of a subject.
Shorter duration voltage pulses may be utilized in the embodiment of
In embodiments of the invention utilizing short duration pulses, the voltage may not be applied continuously for the entire first time period. Instead, the voltage application device may transmit a number of short duration pulses during the first time period. In other words, a number of mini-width or short duration voltage pulses may be applied to the electrodes of the sensor over the first time period. Each mini-width or short duration pulse may have a width of a number of milliseconds. Illustratively, this pulse width may be 30 milliseconds, 50 milliseconds, 70 milliseconds or 200 milliseconds. These values are meant to be illustrative and not limiting. In an embodiment of the invention, such as the embodiment illustrated in
In an embodiment of the invention, each short duration pulse may have the same time duration within the first time period. For example, each short duration voltage pulse may have a time width of 50 milliseconds and each pulse delay between the pulses may be 950 milliseconds. In this example, if two minutes is the measured time for the first timeframe, then 120 short duration voltage pulses may be applied to the sensor. In an embodiment of the invention, each of the short duration voltage pulses may have different time durations. In an embodiment of the invention, each of the short duration voltage pulses may have the same amplitude values. In an embodiment of the invention, each of the short duration voltage pulses may have different amplitude values. By utilizing short duration voltage pulses rather than a continuous application of voltage to the sensor, the same anodic and cathodic cycling may occur and the sensor (e.g., electrodes) is subjected to less total energy or charge overtime. The use of short duration voltage pulses utilizes less power as compared to the application of continuous voltage to the electrodes because there is less energy applied to the sensors (and thus the electrodes).
In embodiments of the invention, the analyzation module may be employed after an anodic/cathodic cycle of three applications of the first voltage and the second voltage to an electrode of the sensor. In an embodiment of the invention, an analyzation module may be employed after one application of the first voltage and the second voltage, as is illustrated in
In an embodiment of the invention, the analyzation module may be utilized to measure a voltage emitted after a current has been introduced across an electrode or across two electrodes. The analyzation module may monitor a voltage level at the electrode or at the receiving level. In an embodiment of the invention, if the voltage level is above a certain threshold, this may mean that the sensor is stabilized. In an embodiment of the invention, if the voltage level falls below a threshold level, this may indicate that the sensor is stabilized and ready to provide readings. In an embodiment of the invention, a current may be introduced to an electrode or across a couple of electrodes. The analyzation module may monitor a current level emitted from the electrode. In this embodiment of the invention, the analyzation module may be able to monitor the current if the current is different by an order of magnitude from the sensor signal current. If the current is above or below a current threshold, this may signify that the sensor is stabilized.
In an embodiment of the invention, the analyzation module may measure an impedance between two electrodes of the sensor. The analyzation module may compare the impedance against a threshold or target impedance value and if the measured impedance is lower than the target or threshold impedance, the sensor (and hence the sensor signal) may be stabilized. In an embodiment of the invention, the analyzation module may measure a resistance between two electrodes of the sensor. In this embodiment of the invention, if the analyzation module compares the resistance against a threshold or target resistance value and the measured resistance value is less than the threshold or target resistance value, then the analyzation module may determine that the sensor is stabilized and that the sensor signal may be utilized.
In an embodiment of the invention illustrated in
In an embodiment of the invention as illustrated in
In an embodiment of the invention, the voltage generation device generates a first voltage for a first timeframe and generates a second voltage for a second timeframe.
Under other operating conditions, the microcontroller 410 may generate a signal to the DAC 420 which instructs the DAC to output a ramp voltage. Under other operating conditions, the microcontroller 410 may generate a signal to the DAC 420 which instructs the DAC 420 to output a voltage simulating a sinusoidal voltage. These signals could be incorporated into any of the pulsing methodologies discussed above in the preceding paragraph or earlier in the application. In an embodiment of the invention, the microcontroller 410 may generate a sequence of instructions and/or pulses, which the DAC 420 receives and understands to mean that a certain sequence of pulses is to be applied. For example, the microcontroller 410 may transmit a sequence of instructions (via signals and/or pulses) that instruct the DAC 420 to generate a constant voltage for a first iteration of a first timeframe, a ramp voltage for a first iteration of a second timeframe, a sinusoidal voltage for a second iteration of a first timeframe, and a squarewave having two values for a second iteration of the second timeframe.
The microcontroller 410 may include programmable logic or a program to continue this cycling for a stabilization timeframe or for several iterations. Illustratively, the microcontroller 410 may include counting logic to identify when the first timeframe or the second timeframe has elapsed. Additionally, the microcontroller 410 may include counting logic to identify that a stabilization timeframe has elapsed. After any of the preceding timeframes have elapsed, the counting logic may instruct the microcontroller to either send a new signal or to stop transmission of a signal to the DAC 420.
The use of the microcontroller 410 allows a variety of voltage magnitudes to be applied in several sequences for several time durations. In an embodiment of the invention, the microcontroller 410 may include control logic or a program to instruct the digital-to-analog converter 420 to transmit a voltage pulse having a magnitude of approximately 1.0 volt for a first time period of 1 minute, to then transmit a voltage pulse having a magnitude of approximately 0.5 volts for a second time period of 4 minutes, and to repeat this cycle for four iterations. In an embodiment of the invention, the microcontroller 420 may be programmed to transmit a signal to cause the DAC 420 to apply the same magnitude voltage pulse for each first voltage in each of the iterations. In an embodiment of the invention, the microcontroller 410 may be programmed to transmit a signal to cause the DAC to apply a different magnitude voltage pulse for each first voltage in each of the iterations. In this embodiment of the invention, the microcontroller 410 may also be programmed to transmit a signal to cause the DAC 420 to apply a different magnitude voltage pulse for each second voltage in each of the iterations. Illustratively, the microcontroller 410 may be programmed to transmit a signal to cause the DAC 420 to apply a first voltage pulse of approximately 1.0 volt in the first iteration, to apply a second voltage pulse of approximately 0.5 volts in the first iteration, to apply a first voltage of 0.7 volts and a second voltage of 0.4 volts in the second iteration, and to apply a first voltage of 1.2 volts and a second voltage of 0.8 volts in the third iteration.
The microcontroller 410 may also be programmed to instruct the DAC 420 to provide a number of short duration voltage pulses for a first timeframe. In this embodiment of the invention, rather than one voltage being applied for the entire first timeframe (e.g., two minutes), a number of shorter duration pulses may be applied to the sensor. In this embodiment, the microcontroller 410 may also be programmed to instruct the DAC 420 to provide a number of short duration voltage pulses for the second timeframe to the sensor. Illustratively, the microcontroller 410 may send a signal to cause the DAC to apply a number of short duration voltage pulses where the short duration is 50 milliseconds or 100 milliseconds. In between these short duration pulses the DAC may apply no voltage, or the DAC may apply a minimal voltage. The microcontroller may cause the DAC 420 to apply the short duration voltage pulses for the first timeframe, e.g., two minutes. The microcontroller 410 may then send a signal to cause the DAC to either not apply any voltage or to apply the short duration voltage pulses at a magnitude of a second voltage for a second timeframe to the sensor, e.g., the second voltage may be 0.75 volts and the second timeframe may be 5 minutes. In an embodiment of the invention, the microcontroller 410 may send a signal to the DAC 420 to cause the DAC 420 to apply a different magnitude voltage for each of the short duration pulses in the first timeframe and/or in the second timeframe. In an embodiment of the invention, the microcontroller 410 may send a signal to the DAC 420 to cause the DAC 420 to apply a pattern of voltage magnitudes to the short durations voltage pulses for the first timeframe or the second timeframe. For example, the microcontroller may transmit a signal or pulses instructing the DAC 420 to apply thirty 20-millisecond pulses to the sensor during the first timeframe. Each of the thirty 20-millisecond pulses may have the same magnitude or may have a different magnitude. In this embodiment of the invention, the microcontroller 410 may instruct the DAC 420 to apply short duration pulses during the second timeframe or may instruct the DAC 420 to apply another voltage waveform during the second timeframe.
Although the disclosures in
In an embodiment of the invention illustrated in
In this embodiment of the invention, the processor 1050 may receive the hydration signal and only start utilizing the sensor signal (e.g., sensor measurements) after the hydration signal has been received. In another embodiment of the invention, the hydration detection circuit 1060 may be coupled between the sensor (the sensor electrodes 1020) and the signal processor 1040. In this embodiment of the invention, the hydration detection circuit 1060 may prevent the sensor signal from being sent to signal processor 1040 until the timer module 1065 has notified the hydration detection circuit 1060 that the set hydration time has elapsed. This is illustrated by the dotted lines labeled with reference numerals 1080 and 1081. Illustratively, the timer module 1065 may transmit a connection signal to a switch (or transistor) to turn on the switch and let the sensor signal proceed to the signal processor 1040. In an alternative embodiment of the invention, the timer module 1065 may transmit a connection signal to turn on a switch 1088 (or close the switch 1088) in the hydration detection circuit 1060 to allow a voltage from the regulator 1035 to be applied to the sensor 1012 after the hydration time has elapsed. In other words, in this embodiment of the invention, the voltage from the regulator 1035 is not applied to the sensor 1012 until after the hydration time has elapsed.
In an embodiment of the invention, the mechanical switch 1160 may also notify the processor 1175 when the sensor 1120 has been disconnected from the sensor electronics device 1125. This is represented by dotted line 1176 in
As noted above, after the detection circuit 1260 has detected that a low-level AC signal is present at the input terminal of the detection circuit 1260, the detection circuit 1260 may later detect that a high-level AC signal, with low attenuation, is present at the input terminal. This represents that the sensor 1220 has been disconnected from the sensor electronics device 1225 or that the sensor is not operating properly. If the sensor has been disconnected from the sensor electronics device 1225, the AC source may be coupled with little or low attenuation to the input of the detection circuit 1260. As noted above, the detection circuit 1260 may generate an interrupt to the microcontroller. This interrupt may be received by the microcontroller and the microcontroller may reduce or eliminate power to one or a number of components or circuits in the sensor electronics device 1225. This may be referred to as the second interrupt. Again, this helps reduce power consumption of the sensor electronics device 1225, specifically when the sensor 1220 is not connected to the sensor electronics device 1225.
In an alternative embodiment of the invention illustrated in
In an alternative embodiment of the invention, the AC source 1255 may be replaced by a DC source. If a DC source is utilized, then a resistance measuring element may be utilized in place of an impedance measuring element 1277. In an embodiment of the invention utilizing the resistance measuring element, once the resistance drops below a resistance threshold or a set criterion, the resistance measuring element may transmit a signal to the detection circuit 1260 (represented by dotted line 1293) or directly to the microcontroller indicating that the sensor is sufficiently hydrated and that power may be applied to the sensor.
In the embodiment of the invention illustrated in
If the sensor 1220 has been connected, but is not sufficiently hydrated or wetted, the effective capacitances Cr-c and Cw-r may not attenuate the AC signal from the AC source 1255. The electrodes in the sensor 1120 are dry before insertion and because the electrodes are dry, a good electrical path (or conductive path) does not exist between the two electrodes. Accordingly, a high-level AC signal or lowly attenuated AC signal may still be detected by the detection circuit 1260 and no interrupt may be generated. Once the sensor has been inserted, the electrodes become immersed in the conductive body fluid. This results in a leakage path with lower DC resistance. Also, boundary layer capacitors form at the metal/fluid interface. In other words, a rather large capacitance forms between the metal/fluid interface and this large capacitance looks like two capacitors in series between the electrodes of the sensor. This may be referred to as an effective capacitance. In practice, a conductivity of an electrolyte above the electrode is being measured. In some embodiments of the invention, the glucose limiting membrane (GLM) also illustrates impedance blocking electrical efficiency. An unhydrated GLM results in high impedance, whereas a high moisture GLM results in low impedance. Low impedance is desired for accurate sensor measurements.
In an alternative embodiment of the invention, after the connection of the sensor to the sensor electronics device, an AC signal (e.g., a low voltage AC signal) may be applied 1340 to the sensor, e.g., the reference electrode of the sensor. The AC signal may be applied because the connection of the sensor to the sensor electronics device allows the AC signal to be applied to the sensor. After application of the AC signal, an effective capacitance forms 1350 between the electrode in the sensor that the voltage is applied to and the other two electrodes. A detection circuit determines 1360 what level of the AC signal is present at the input of the detection circuit. If a low-level AC signal (or highly attenuated AC signal) is present at the input of the detection circuit, due to the effective capacitance forming a good electrical conduit between the electrodes and the resulting attenuation of the AC signal, an interrupt is generated 1370 by the detection circuit and sent to a microcontroller.
The microcontroller receives the interrupt generated by the detection circuit and transmits 1380 a signal to a digital-to-analog converter instructing or causing the digital-to-analog converter to apply a voltage to an electrode of the sensor, e.g., the counter electrode. The application of the voltage to the electrode of the sensor results in the sensor creating or generating a sensor signal 1390. A sensor signal measurement device 431 measures the generated sensor signal and transmits the sensor signal to the microcontroller. The microcontroller receives 1395 the sensor signal from the sensor signal measurement device, which is coupled to the working electrode, and processes the sensor signal to extract a measurement of a physiological characteristic of the subject or patient.
The microcontroller receives the interrupt and transmits 1380 a signal to a digital-to-analog converter to apply a voltage to the sensor. In an alternative embodiment of the invention, the digital-to-analog converter can apply a current to the sensor, as discussed above. The sensor, e.g., the working electrode, creates 1390 a sensor signal, which represents a physiological parameter of a patient. The microcontroller receives 1395 the sensor signal from a sensor signal measuring device, which measures the sensor signal at an electrode in the sensor, e.g., the working electrode. The microcontroller processes the sensor signal to extract a measurement of the physiological characteristic of the subject or patient, e.g., the blood glucose level of the patient.
In an embodiment of the invention, the detection circuit may determine 1432 that a high-level AC signal has continued to be present at the input of the detection circuit (e.g., an input of a comparator), even after a hydration time threshold has elapsed. For example, the hydration time threshold may be 10 minutes. After 10 minutes has elapsed, the detection circuit may still be detecting that a high-level AC signal is present. At this point in time, the detection circuit may transmit 1434 a hydration assist signal to the microcontroller. If the microcontroller receives the hydration assist signal, the microcontroller may transmit 1436 a signal to cause a DAC to apply a voltage pulse or a series of voltage pulses to assist the sensor in hydration. In an embodiment of the invention, the microcontroller may transmit a signal to cause the DAC to apply a portion of the stabilization sequence or other voltage pulses to assist in hydrating the sensor. In this embodiment of the invention, the application of voltage pulses may result in the low-level AC signal (or highly attenuated signal) being detected 1438 at the detection circuit. At this point, the detection circuit may transmit an interrupt, as is disclosed in step 1430, and the microcontroller may initiate a stabilization sequence.
The above-described hydration and stabilization processes may be used, in general, as part of a larger continuous glucose monitoring (CGM) methodology. The current state of the art in continuous glucose monitoring is largely adjunctive, meaning that the readings provided by a CGM device (including, e.g., an implantable or subcutaneous sensor) cannot be used without a reference value in order to make a clinical decision. The reference value, in turn, must be obtained from a finger stick using, e.g., a BG meter. The reference value is needed because there is a limited amount of information that is available from the sensor/sensing component. Specifically, the only pieces of information that are currently provided by the sensing component for processing are the raw sensor value (i.e., the sensor current or Isig) and the counter voltage, which is the voltage between the counter electrode and the reference electrode (see, e.g.,
Embodiments of the inventions described herein are directed to advancements and improvements in continuous glucose monitoring resulting in a more autonomous system, as well as related devices and methodologies, wherein the requirement of reference finger sticks may be minimized, or eliminated, and whereby clinical decisions may be made based on information derived from the sensor signal alone, with a high level of reliability. From a sensor-design standpoint, in accordance with embodiments of the invention, such autonomy may be achieved through electrode redundancy, sensor diagnostics, and Isig and/or sensor glucose (SG) fusion.
As will be explored further hereinbelow, redundancy may be achieved through the use of multiple working electrodes (e.g., in addition to a counter electrode and a reference electrode) to produce multiple signals indicative of the patient's blood glucose (BG) level. The multiple signals, in turn, may be used to assess the relative health of the (working) electrodes, the overall reliability of the sensor, and the frequency of the need, if at all, for calibration reference values.
Sensor diagnostics includes the use of additional (diagnostic) information which can provide a real-time insight into the health of the sensor. In this regard, it has been discovered that Electrochemical Impedance Spectroscopy (EIS) provides such additional information in the form of sensor impedance and impedance-related parameters at different frequencies. Moreover, advantageously, it has been further discovered that, for certain ranges of frequencies, impedance and/or impedance-related data are substantially glucose independent. Such glucose independence enables the use of a variety of EIS-based markers or indicators for not only producing a robust, highly-reliable sensor glucose value (through fusion methodologies), but also assessing the condition, health, age, and efficiency of individual electrode(s) and of the overall sensor substantially independently of the glucose-dependent Isig.
For example, analysis of the glucose-independent impedance data provides information on the efficiency of the sensor with respect to how quickly it hydrates and is ready for data acquisition using, e.g., values for 1 kHz real-impedance, 1 kHz imaginary impedance, and Nyquist Slope (to be described in more detail hereinbelow). Moreover, glucose-independent impedance data provides information on potential occlusion(s) that may exist on the sensor membrane surface, which occlusion(s) may temporarily block passage of glucose into the sensor and thus cause the signal to dip (using, e.g., values for 1 kHz real impedance). In addition, glucose-independent impedance data provides information on loss of sensor sensitivity during extended wear—potentially due to local oxygen deficit at the insertion site—using, e.g., values for phase angle and/or imaginary impedance at 1 kHz and higher frequencies.
Within the context of electrode redundancy and EIS, as well as other contexts, as will be described in further detail hereinbelow, a fusion algorithm may be used to take the diagnostic information provided by EIS for each redundant electrode and assess the reliability of each electrode independently. Weights, which are a measure of reliability, may then be added for each independent signal, and a single fused signal may be calculated that can be used to generate sensor glucose values as seen by the patient/subject.
As can be seen from the above, the combined use of redundancy, sensor diagnostics using EIS, and EIS-based fusion algorithms allows for an overall CGM system that is more reliable than what is currently available. Redundancy is advantageous in at least two respects. First, redundancy removes the risk of a single point of failure by providing multiple signals. Second, providing multiple (working) electrodes where a single electrode may be sufficient allows the output of the redundant electrode to be used as a check against the primary electrode, thereby reducing, and perhaps eliminating, the need for frequent calibrations. In addition, EIS diagnostics scrutinize the health of each electrode autonomously without the need for a reference glucose value (finger stick), thereby reducing the number of reference values required. However, the use of EIS technology and EIS diagnostic methods is not limited to redundant systems, i.e., those having more than one working electrode. Rather, as is discussed below in connection with embodiments of the invention, EIS may be advantageously used in connection with single- and/or multiple-electrode sensors.
EIS, or AC impedance methods, study the system response to the application of a periodic small amplitude AC signal. This is shown illustratively in
One simplified electrical circuit model that has been used to describe electrochemical impedance spectroscopy is shown in
As is known, impedance may be defined in terms of its magnitude and phase, where the magnitude (|Z|) is the ratio of the voltage difference amplitude to the current amplitude, and the phase (θ) is the phase shift by which the current is ahead of the voltage. When a circuit is driven solely with direct current (DC), the impedance is the same as the resistant, i.e., resistance is a special case of impedance with zero phase angle. However, as a complex quantity, impedance may also be represented by its real and imaginary parts. In this regard, the real and imaginary impedance can be derived from the impedance magnitude and phase using the following equations:
Real Impedance(ω)=Magnitude(ω)×cos(Phase(ω)/180×π)
Imaginary Impedance(ω)=Magnitude(ω)×sin(Phase(ω)/180×π)
where ω represents the input frequency at which the magnitude (in ohms) and the phase (in degrees) are measured. The relationship between impedance, on the one hand, and current and voltage on the other—including how the former may be calculated based on measurement of the latter—will be explored more fully below in connection with the sensor electronics, including the Application Specific Integrated Circuit (ASIC), that has been developed for use in embodiments of the invention.
Continuing with the circuit model shown in
where Zw(ω) is the Warburg impedance, ω is the angular velocity, j is the imaginary unit (used instead of the traditional “i” so as not to be confused with electric current), and Cd, Rp, and Rs are the double layer capacitance, the polarization resistance, and the solution resistance, respectively (as defined previously). Warburg impedance can be calculated as
where D is diffusivity, L is the sensor membrane thickness, C is Peroxide concentration, and m: ½ corresponds to a 45° Nyquist slope.
A Nyquist plot is a graphical representation, wherein the real part of impedance (Real Z) is plotted against its imaginary part (Img Z) across a spectrum of frequencies.
The Nyquist plot of
With reference to
In performing an EIS analysis, an AC voltage of various frequencies and a DC bias may be applied between, e.g., the working and reference electrodes. In this regard, EIS is an improvement over previous methodologies that may have limited the application to a simple DC current or an AC voltage of single frequency. Although, generally, EIS may be performed at frequencies in the μHz to MHz range, in embodiments of the invention, a narrower range of frequencies (e.g., between about 0.1 Hz and about 8 kHz) may be sufficient. Thus, in embodiments of the invention, AC potentials may be applied that fall within a frequency range of between about 0.1 Hz and about 8 kHz, with a programmable amplitude of up to at least 100 mV, and preferably at about 50 mV.
Within the above-mentioned frequency range, the relatively-higher frequencies—i.e., those that fall generally between about 1 kHz and about 8 kHz—are used to scrutinize the capacitive nature of the sensor. Depending on the thickness and permeability of membranes, a typical range of impedance at the relatively-higher frequencies may be, e.g., between about 500 Ohms and 25 kOhms, and a typical range for the phase may be, e.g., between 0 degrees and −40 degrees. The relatively-lower frequencies—i.e., those that fall generally between about 0.1 Hz and about 100 Hz—on the other hand, are used to scrutinize the resistive nature of the sensor. Here, depending on electrode design and the extent of metallization, a typical functioning range for output real impedance may be, e.g., between about 50 kOhms and 300 kOhms, and atypical range for the phase may be between about −50 degrees to about −90 degrees. The above illustrative ranges are shown, e.g., in the Bode plots of
As noted previously, the phrases “higher frequencies” and “lower frequencies” are meant to be used relative to one another, rather than in an absolute sense, and they, as well as the typical impedance and phase ranges mentioned above, are meant to be illustrative, and not limiting. Nevertheless, the underlying principle remains the same: the capacitive and resistive behavior of a sensor can be scrutinized by analyzing the impedance data across a frequency spectrum, wherein, typically, the lower frequencies provide information about the more resistive components (e.g., the electrode, etc.), while the higher frequencies provide information about the capacitive components (e.g., membranes). However, the actual frequency range in each case is dependent on the overall design, including, e.g., the type(s) of electrode(s), the surface area of the electrode(s), membrane thickness, the permeability of the membrane, and the like. See also
EIS may be used in sensor systems where the sensor includes a single working electrode, as well those in which the sensor includes multiple (redundant) working electrodes. In one embodiment, EIS provides valuable information regarding the age (or aging) of the sensor. Specifically, at different frequencies, the magnitude and the phase angle of the impedance vary. As seen in
Additionally, EIS may enable detection of sensor failure by detecting when the sensor's impedance drops below a low impedance threshold level indicating that the sensor may be too worn to operate normally. The system may then terminate the sensor before the specified operating life. As will be explored in more detail below, sensor impedance can also be used to detect other sensor failure (modes). For example, when a sensor goes into a low-current state (i.e., sensor failure) due to any variety of reasons, the sensor impedance may also increase beyond a certain high impedance threshold. If the impedance becomes abnormally high during sensor operation, due, e.g., to protein or polypeptide fouling, macrophage attachment or any other factor, the system may also terminate the sensor before the specified sensor operating life.
At block 1810, an EIS procedure is applied and the impedance is compared to both a first high and a first low threshold. An example of a first high and first low threshold value would be 7 kOhms and 8.5 kOhms, respectively, although the values can be set higher or lower as needed. If the impedance, for example, Rp+Rs, is higher than the first high threshold, the sensor undergoes an additional initialization procedure (e.g., the application of one or more additional pulses) at block 1820. Ideally, the number of total initialization procedures applied to initialize the sensor would be optimized to limit the impact on both the battery life of the sensor and the overall amount of time needed to stabilize a sensor. Thus, by applying EIS, fewer initializations can be initially performed, and the number of initializations can be incrementally added to give just the right amount of initializations to ready the sensor for use. Similarly, in an alternative embodiment, EIS can be applied to the hydration procedure to minimize the number of initializations needed to aid the hydration process as described in
On the other hand, if the impedance, for example, Rp+Rs, is below the first low threshold, the sensor will be determined to be faulty and would be terminated immediately at block 1860. A message will be given to the user to replace the sensor and to begin the hydration process again. If the impedance is within the high and low thresholds, the sensor will begin to operate normally at block 1830. The logic then proceeds to block 1840 where an additional EIS is performed to check the age of the sensor. The first time the logic reaches block 1840, the microcontroller will perform an EIS to gauge the age of the sensor to close the loophole of the user being able to plug in and plug out the same sensor. In future iterations of the EIS procedure as the logic returns to block 1840, the microprocessor will perform an EIS at fixed intervals during the specified life of the sensor. In one preferred embodiment, the fixed interval is set for every 2 hours, however, longer or shorter periods of time can easily be used.
At block 1850, the impedance is compared to a second set of high and low thresholds. An example of such second high and low threshold values may be 5.5 kOhms and 8.5 kOhms, respectively, although the values can be set higher or lower as needed. As long as the impedance values stay within a second high and low threshold, the logic proceeds to block 1830, where the sensor operates normally until the specified sensor life, for example, 5 days, is reached. Of course, as described with respect to block 1840, EIS will be performed at the regularly scheduled intervals throughout the specified sensor life. However, if, after the EIS is performed, the impedance is determined to have dropped below a second lower threshold or risen above a second higher threshold at block 1850, the sensor is terminated at block 1860. In further alternative embodiments, a secondary check can be implemented of a faulty sensor reading. For example, if the EIS indicates that the impedance is out of the range of the second high and low thresholds, the logic can perform a second EIS to confirm that the second set of thresholds is indeed not met (and confirm that the first EIS was correctly performed) before determining the end of sensor at block 1860.
A second optional diagnostic EIS procedure 1940 is scheduled after sensor power-up at point 1930, but before sensor initialization starts at point 1950. Scheduled here, the second diagnostic EIS procedure 1940 can detect if a sensor is being re-used prior to the start of initialization at 1950. The test to determine if the sensor is being reused was detailed in the description of
A third optional diagnostic EIS procedure 1960 is scheduled after initialization starts at point 1950. The third diagnostic EIS procedure 1960 tests the sensor's impedance value to determine if the sensor is fully initialized. The third diagnostic EIS procedure 1960 should be performed at the minimum amount of time needed for any sensor to be fully initialized. When performed at this time, sensor life is maximized by limiting the time a fully initialized sensor goes unused, and over-initialization is averted by confirming full initialization of the sensor before too much initialization occurs. Preventing over-initialization is important because over-initialization results in a suppressed current which can cause inaccurate readings. However, under-initialization is also a problem, so if the third diagnostic EIS procedure 1960 indicates the sensor is under-initialized, an optional initialization at point 1970 may be performed in order to fully initialize the sensor. Under-initialization is disadvantageous because it results in an excessive current that does not relate to the actual glucose concentration. Because of the danger of under- and over-initialization, the third diagnostic EIS procedure plays an important role in ensuring the sensor functions properly when used.
In addition, optional periodic diagnostic EIS procedures 1980 can be scheduled for the time after the sensor is fully initialized. The EIS procedures 1980 can be scheduled at any set interval. As will be discussed in more detail below, EIS procedures 1980 may also be triggered by other sensor signals, such as an abnormal current or an abnormal counter electrode voltage. Additionally, as few or as many EIS procedures 1980 can be scheduled as desired. In preferred embodiments, the EIS procedure used during the hydration process, sensor life check, initialization process, or the periodic diagnostic tests is the same procedure. In alternative embodiments, the EIS procedure can be shortened or lengthened (i.e., fewer or more ranges of frequencies checked) for the various EIS procedures depending on the need to focus on specific impedance ranges. The periodic diagnostic EIS procedures 1980 monitor impedance values to ensure that the sensor is continuing to operate at an optimal level.
The sensor may not be operating at an optimal level if the sensor current has dropped due to polluting species, sensor age, or a combination of polluting species and sensor age. A sensor that has aged beyond a certain length is no longer useful, but a sensor that has been hampered by polluting species can possibly be repaired. Polluting species can reduce the surface area of the electrode or the diffusion pathways of analytes and reaction byproducts, thereby causing the sensor current to drop. These polluting species are charged and gradually gather on the electrode or membrane surface under a certain voltage. Previously, polluting species would destroy the usefulness of a sensor. Now, if periodic diagnostic EIS procedures 1980 detect impedance values which indicate the presence of polluting species, remedial action can be taken. When remedial action is to be taken is described with respect to
Additionally, any scheduled diagnostic EIS procedure 1980 may be suspended or rescheduled when certain events are determined imminent. Such events may include any circumstance requiring the patient to check the sensor reading, including for example when a patient measures his or her BG level using a test strip meter in order to calibrate the sensor, when a patient is alerted to a calibration error and the need to measure his or her BG level using a test strip meter a second time, or when a hyperglycemic or hypoglycemic alert has been issued but not acknowledged.
At block 2010, the impedance value is compared to a set high and low threshold to determine if it is normal. If impedance is within the set boundaries of the high and low thresholds at block 2010, normal sensor operation is resumed at block 2020 and the logic of
The block 2030 remedial action is performed to remove any of the polluting species, which may have caused the abnormal impedance value. In preferred embodiments, the remedial action is performed by applying a reverse current, or a reverse voltage between the working electrode and the reference electrode. The specifics of the remedial action will be described in more detail with respect to
If the sensor's impedance value is determined to have been restored to normal at block 2050, normal sensor operation at block 2020 will occur. If impedance is still not normal, indicating that either sensor age is the cause of the abnormal impedance or the remedial action was unsuccessful in removing the polluting species, the sensor is then terminated at block 2060. In alternative embodiments, instead of immediately terminating the sensor, the sensor may generate a sensor message initially requesting the user to wait and then perform further remedial action after a set period of time has elapsed. This alternative step may be coupled with a separate logic to determine if the impedance values are getting closer to being within the boundary of the high and low threshold after the initial remedial action is performed. For example, if no change is found in the sensor impedance values, the sensor may then decide to terminate. However, if the sensor impedance values are getting closer to the preset boundary, yet still outside the boundary after the initial remedial action, an additional remedial action could be performed. In yet another alternative embodiment, the sensor may generate a message requesting the user to calibrate the sensor by taking a finger stick meter measurement to further confirm whether the sensor is truly failing. All of the above embodiments work to prevent a user from using a faulty sensor that produces inaccurate readings.
While the above examples illustrate the use, primarily, of real impedance data in sensor diagnostics, embodiments of the invention are also directed to the use of other EIS-based, and substantially analyte-independent, parameters (in addition to real impedance) in sensor diagnostic procedures. For example, as mentioned previously, analysis of (substantially) glucose-independent impedance data, such as, e.g., values for 1 kHz real impedance and 1 kHz imaginary impedance, as well as Nyquist slope, provide information on the efficiency of the sensor with respect to how quickly it hydrates and is ready for data acquisition. Moreover, (substantially) glucose-independent impedance data, such as, e.g., values for 1 kHz real impedance, provides information on potential occlusion(s) that may exist on the sensor membrane surface, which occlusion(s) may temporarily block passage of glucose into the sensor and thus cause the signal to dip.
In addition, (substantially) glucose-independent impedance data, such as, e.g., values for higher-frequency phase angle and/or imaginary impedance at 1 kHz and higher frequencies, provides information on loss of sensor sensitivity during extended wear, which sensitivity loss may potentially be due to local oxygen deficit at the insertion site. In this regard, the underlying mechanism for oxygen deficiency-led sensitivity loss may be described as follows: when local oxygen is deficient, sensor output (i.e., Isig and SG) will be dependent on oxygen rather than glucose and, as such, the sensor will lose sensitivity to glucose. Other markers, including 0.1 Hz real impedance, the counter electrode voltage (Vcntr), and EIS-induced spikes in the Isig may also be used for the detection of oxygen deficiency-led sensitivity loss. Moreover, in a redundant sensor system, the relative differences in 1 kHz real impedance, 1 kHz imaginary impedance, and 0.1 Hz real impedance between two or more working electrodes may be used for the detection of sensitivity loss due to biofouling.
In accordance with embodiments of the invention, EIS-based sensor diagnostics entails consideration and analysis of EIS data relating to one or more of at least three primary factors, i.e., potential sensor failure modes: (1) signal start-up; (2) signal dip; and (3) sensitivity loss. Significantly, the discovery herein that a majority of the impedance-related parameters that are used in such diagnostic analyses and procedures can be studied at a frequency, or within a range of frequencies, where the parameter is substantially analyte-independent allows for implementation of sensor-diagnostic procedures independently of the level of the analyte in a patient's body. Thus, while EIS-based sensor diagnostics may be triggered by, e.g., large fluctuations in Isig, which is analyte-dependent, the impedance-related parameters that are used in such sensor diagnostic procedures are themselves substantially independent of the level of the analyte. As will be explored in more detail below, it has also been found that, in a majority of situations where glucose may be seen to have an effect on the magnitude (or other characteristic) of an EIS-based parameter, such effect is usually small enough—e.g., at least an order of magnitude difference between the EIS-based measurement and the glucose effect thereon—such that it can be filtered out of the measurement, e.g., via software in the IC.
By definition, “start-up” refers to the integrity of the sensor signal during the first few hours (e.g., t=0-6 hours) after insertion. For example, in current devices, the signal during the first 2 hours after insertion is deemed to be unreliable and, as such, the sensor glucose values are blinded to the patient/user. In situations where the sensor takes an extended amount of time to hydrate, the sensor signal is low for several hours after insertion. With the use of EIS, additional impedance information is available (by running an EIS procedure) right after the sensor has been inserted. In this regard, the total impedance equation may be used to explain the principle behind low-startup detection using 1 kHz real impedance. At relatively higher frequencies—in this case, 1 kHz and above—imaginary impedance is very small (as confirmed with in-vivo data), such that total impedance reduces to:
As sensor wetting is gradually completed, the double layer capacitance (Ca) increases. As a result, the total impedance will decrease because, as indicated in the equation above, total impedance is inversely proportional to Ca. This is illustrated in the form of the intercept 1600 on the real impedance axis shown, e.g., in
Another marker for low startup detection is Nyquist slope, which relies solely on the relatively lower-frequency impedance which, in turn, corresponds to the Warburg impedance component of total impedance (see, e.g.,
In
By definition, signal (or Isig) dips refer to instances of low sensor signal, which are mostly temporary in nature, e.g., on the order of a few hours. Such low signals may be caused, for example, by some form of biological occlusion on the sensor surface, or by pressure applied at the insertion site (e.g., while sleeping on the side). During this period, the sensor data is deemed to be unreliable; however, the signal does recover eventually. In the EIS data, this type of signal dip—as opposed to one that is caused by a glycemic change in the patient's body—is reflected in the 1 kHz real impedance data, as shown in
Specifically, in
By definition, sensitivity loss refers to instances where the sensor signal (Isig) becomes low and non-responsive for an extended period of time and is usually unrecoverable. Sensitivity loss may occur for a variety of reasons. For example, electrode poisoning drastically reduces the active surface area of the working electrode, thereby severely limiting current amplitude. Sensitivity loss may also occur due to hypoxia, or oxygen deficit, at the insertion site. In addition, sensitivity loss may occur due to certain forms of extreme surface occlusion (i.e., a more permanent form of the signal dip caused by biological or other factors) that limit the passage of both glucose and oxygen through the sensor membrane, thereby lowering the number/frequency of the chemical reactions that generate current in the electrode and, ultimately, the sensor signal (Isig). It is noted that the various causes of sensitivity loss mentioned above apply to both short-term (7 to 10-day wear) and long term (6-month wear) sensors.
In the EIS data, sensitivity loss is often preceded by an increase in the absolute value of phase (|phase|) and of the imaginary impedance (|imaginary impedance|) at the relatively higher frequency ranges (e.g., 128 Hz and above, and 1 kHz and above, respectively).
Specifically, the top graph in
Thus, in the example
Returning to
The above-described signatures may be verified by in-vitro testing, an example of which is shown in
In short, the diagrams illustrate the discovery that oxygen deficiency-led sensitivity loss is coupled with lower 1 kHz imaginary impedance (i.e., the latter becomes more negative), higher 0.105 Hz real impedance (i.e., the latter becomes more positive), and Vcntr rail. Moreover, the oxygen-deficiency process and Vcntr-rail are often coupled with the increase of the capacitive component in the electrochemical circuit. It is noted that, in some of the diagnostic procedures to be described later, the 0.105 Hz real impedance may not be used, as it appears that this relatively lower-frequency real impedance data may be analyte-dependent.
Finally, in connection with the example of
Various of the above-described impedance-related parameters may be used, either individually or in combination, as inputs into: (1) EIS-based sensor diagnostic procedures; and/or (2) fusion algorithms for generating more reliable sensor glucose values. With regard to the former,
The diagnostic procedure illustrated in the flow diagram of
The temporal frequency of EIS implementation and data collection may be dictated by various factors. For example, each implementation of EIS consumes a certain amount of power, which is typically provided by the sensor's battery, i.e., the battery running the sensor electronics, including the ASIC which is described later. As such, battery capacity, as well as the remaining sensor life, may help determine the number of times EIS is run, as well as the breadth of frequencies sampled for each such run. In addition, embodiments of the invention envision situations that may require that an EIS parameter at a specific frequency (e.g., real impedance at 1 kHz) be monitored based on a first schedule (e.g., once every few seconds, or minutes), while other parameters, and/or the same parameter at other frequencies, can be monitored based on a second schedule (e.g., less frequently). In these situations, the diagnostic procedure can be tailored to the specific sensor and requirements, such that battery power may be preserved, and unnecessary and/or redundant EIS data acquisition may be avoided.
It is noted that, in embodiments of the invention, a diagnostic procedure, such as the one shown in
With the above in mind, the logic of the diagnostic procedure shown in
If it is determined that the sensor is still in place, the logic moves to step 3110 to determine whether the sensor is properly initialized. As shown, the “Init. Check” is performed by determining: (i) whether |(Zn−Z1)/Z1|>30% at 1 kHz, where Z1 is the real impedance measured at a first time, and Zn is the measured impedance at the next interval, at discussed above; and (2) whether the phase angle change is greater than 100 at 0.1 Hz. If the answer to either one of the questions is “yes”, then the test is satisfactory, i.e., the Test 1 is not failed. Otherwise, the Test 1 is marked as a failure.
At step 3120, Test 2 asks whether, at a phase angle of −45°, the difference in frequency between two consecutive EIS runs (f2−f1) is greater than 10 Hz. Again, a “No” answer is marked as a fail; otherwise, Test 2 is satisfactorily met.
Test 3 at step 3130 is a hydration test. Here, the inquiry is whether the current impedance Zn is less than the post-initialization impedance Zpi at 1 kHz. If it is, then this test is satisfied; otherwise, Test 3 is marked as a fail. Test 4 at step 3140 is also a hydration test, but this time at a lower frequency. Thus, this test asks whether Zn is less than 300 kOhms at 0.1 Hz during post-initialization sensor operation. Again, a “No” answer indicates that the sensor has failed Test 4.
At step 3150, Test 5 inquires whether the low-frequency Nyquist slope is globally increasing from 0.1 Hz to 1 Hz. As discussed previously, for a normally-operating sensor, the relatively lower-frequency Nyquist slope should be increasing overtime. Thus, this testis satisfied if the answer to the inquiry is “yes”; otherwise, the test is marked as failed.
Step 3160 is the last test for this embodiment of the diagnostic procedure. Here, the inquiry is whether real impedance is globally decreasing. Again, as was discussed previously, in a normally-operating sensor, it is expected that, as time goes by, the real impedance should be decreasing. Therefore, a “Yes” answer here would mean that the sensor is operating normally; otherwise, the sensor fails Test 6.
Once all 6 tests have been implemented, a decision is made at 3170 as to whether the sensor is operating normally, or whether it has failed. In this embodiment, a sensor is determined to be functioning normally (3172) if it passes at least 3 out of the 6 tests. Put another way, in order to be determined to have failed (3174), the sensor must fail at least 4 out of the 6 tests. In alternative embodiments, a different rule may be used to assess normal operation versus sensor failure. In addition, in embodiments of the invention, each of the tests may be weighted, such that the assigned weight reflects, e.g., the importance of that test, or of the specific parameter(s) queried for that test, in determining overall sensor operation (normal vs. failed). For example, one test may be weighted twice as heavily as another, but only half as heavily as a third test, etc.
In other alternative embodiments, a different number of tests and/or a different set of EIS-based parameters for each test may be used.
At 3205, Test 1 is similar to Test 1 of the diagnostic procedure discussed above in connection with
Moving to 3210, the logic next performs a sensitivity-loss check by inquiring whether, after a 2-hour interval (n+2), the percentage change in impedance magnitude at 1 kHz, as well as that in the Isig, is greater than 30%. If the answer to both inquiries is “yes”, then it is determined that the sensor is losing sensitivity and, as such, Test 2 is determined to be failed. It is noted that, although Test 2 is illustrated herein based on a preferred percentage difference of 30%, in other embodiments, the percentage differences in the impedance magnitude at 1 kHz and in the Isig may fall within the range 10%-50% for purposes of conducting this test.
Test 3 (at 3220) is similar to Test 5 of the algorithm illustrated in
The logic next moves to 3230, which is another low-frequency test, this time involving the phase and the impedance magnitude. More specifically, the phase test inquires whether the phase at 0.1 Hz is continuously increasing over time. If it is, then the test is failed. As with other tests where the parameter's trending is monitored, the low-frequency phase test of Test 4 is also amenable to setting a threshold, or an acceptable range, for the percent change in the low-frequency phase, beyond which the sensor may be deemed to be failed or, at the very least, raise a concern. In embodiments of the invention, such threshold value/acceptable range for the percent change in low-frequency phase may fall within a range of about 5% to about 30%. In some preferred embodiments, the threshold value may be about 10%.
As noted, Test 4 also includes a low-frequency impedance magnitude test, where the inquiry is whether the impedance magnitude at 0.1 Hz is continuously increasing over time. If it is, then the test is failed. It is noted that Test 4 is considered “failed” if either the phase test or the impedance magnitude test is failed. The low-frequency impedance magnitude test of Test 4 is also amenable to setting a threshold, or an acceptable range, for the percent change in the low-frequency impedance magnitude, beyond which the sensor may be deemed to be failed or, at the very least, raise a concern. In embodiments of the invention, such threshold value/acceptable range for the percent change in low-frequency impedance magnitude may fall within a range of about 5% to about 30%. In some preferred embodiments, the threshold value may be about 10%, where the range for impedance magnitude in normal sensors is generally between about 100 KOhms and about 200 KOhms.
Test 5 (at 3240) is another sensitivity loss check that may be thought of as supplemental to Test 2. Here, if both the percentage change in the Isig and the percentage change in the impedance magnitude at 1 kHz are greater than 30%, then it is determined that the sensor is recovering from sensitivity loss. In other words, it is determined that the sensor had previously undergone some sensitivity loss, even if the sensitivity loss was not, for some reason, detected by Test 2. As with Test 2, although Test 5 is illustrated based on a preferred percentage difference of 30%, in other embodiments, the percentage differences in the Isig and the impedance magnitude at 1 kHz may fall within the range 10%-50% for purposes of conducting this test.
Moving to 3250, Test 6 provides a sensor functionality test with specific failure criteria that have been determined based on observed data and the specific sensor design. Specifically, in one embodiment, a sensor may be determined to have failed and, as such, to be unlikely to respond to glucose, if at least two out of the following three criteria are met: (1) Isig is less than 10 nA; and (2) the imaginary impedance at 1 kHz is less than −1500 Ohm; and (3) the phase at 1 kHz is less than −15°. Thus, Test 6 is determined to have been passed if any two of (1)-(3) are not met. It is noted that, in other embodiments, the Isig prong of this test may be failed if the Isig is less than about 5 nA to about 20 nA. Similarly, the second prong may be failed if the imaginary impedance at 1 kHz is less than about −1000 Ohm to about −2000 Ohms. Lastly, the phase prong may be failed if the phase at 1 kHz is less than about −10° to about −20°.
Lastly, step 3260 provides another sensitivity check, wherein the parameters are evaluated at low frequency. Thus, Test 7 inquires whether, at 0.1 Hz, the magnitude of the difference between the ratio of the imaginary impedance to the Isig (n+2), on the one hand, and the pervious value of the ratio, on the other, is larger than 30% of the magnitude of the previous value of the ratio. If it is, then the test is failed; otherwise, the test is passed. Here, although Test 7 is illustrated based on a preferred percentage difference of 30%, in other embodiments, the percentage difference may fall within the range 10%-50% for purposes of conducting this test.
Once all 7 tests have been implemented, a decision is made at 3270 as to whether the sensor is operating normally, or whether an alert should be sent out, indicating that the sensor has failed (or may be failing). As shown, in this embodiment, a sensor is determined to be functioning normally (3272) if it passes at least 4 out of the 7 tests. Put another way, in order to be determined to have failed, or to at least raise a concern (3274), the sensor must fail at least 4 out of the 7 tests. If it is determined that the sensor is “bad” (3274), an alert to that effect may be sent, e.g., to the patient/user. As noted previously, in alternative embodiments, a different rule may be used to assess normal operation versus sensor failure/concern. In addition, in embodiments of the invention, each of the tests may be weighted, such that the assigned weight reflects, e.g., the importance of that test, or of the specific parameter(s) queried for that test, in determining overall sensor operation (normal vs. failed).
As was noted previously, in embodiments of the invention, various of the above-described impedance-related parameters may be used, either individually or in combination, as inputs into one or more fusion algorithms for generating more reliable sensor glucose values. Specifically, it is known that, unlike a single-sensor (i.e., a single-working-electrode) system, multiple sensing electrodes provide higher-reliability glucose readouts, as a plurality of signals, obtained from two or more working electrodes, may be fused to provide a single sensor glucose value. Such signal fusion utilizes quantitative inputs provided by EIS to calculate the most reliable output sensor glucose value from the redundant working electrodes. It is noted that, while the ensuing discussion may describe various fusion algorithms in terms of a first working electrode (WE1) and a second working electrode (WE2) as the redundant electrodes, this is by way of illustration, and not limitation, as the algorithms and their underlying principles described herein are applicable to, and may be used in, redundant sensor systems having more than 2 working electrodes.
It is important to note that each of flowcharts shown in
The output from each of the Bound Check 3452 and the Noise Check 3458 is a respective reliability index (RI) for each of the redundant working electrodes. Thus, the output from the Bound Check includes, e.g., RI_bound_We1 (3543) and RI_bound_We2 (3454). Similarly, for the Noise Check, the output includes, e.g., RI_noise_We1 (3457) and RI_noise_We2 (3458). The bound and noise reliability indices for each working electrode are calculated based on compliance with the above-mentioned ranges for normal sensor operation. Thus, if any of the parameters falls outside the specified ranges for a particular electrode, the reliability index for that particular electrode decreases.
It is noted that the threshold values, or ranges, for the above-mentioned parameters may depend on various factors, including the specific sensor and/or electrode design. Nevertheless, in one preferred embodiment, typical ranges for some of the above-mentioned parameters may be, e.g., as follows: Bound threshold for 1 kHz real impedance=[0.3e+4 2e+4]; Bound threshold for 1 kHz imaginary impedance=[−2e+3, 0]; Bound threshold for 0.105 Hz real impedance=[2e+4 7e+4]; Bound threshold for 0.105 Hz imaginary impedance=[−2e+5-0.25e+5]; and Bound threshold for Nyquist slope=[2 5]. Noise may be calculated, e.g., using second order central difference method where, if noise is above a certain percentage (e.g., 30%) of median value for each variable buffer, it is considered to be out of noise bound.
Second, sensor dips may be detected using sensor current (Isig) and 1 kHz real impedance. Thus, as shown in
In accordance with embodiments of the invention, the divergence/convergence of two signals (e.g., two Isigs, or two 1 kHz real impedance data points) can be calculated as follows:
diff_va1=abs(va1−(va1+va2)/2);
diff_va2=abs(va2−(va1+va2)/2);
RI_sim=1−(diff_va1+diff_va2)/(mean(abs(va1+va2))/4)
where va1 and va2 are two variables, and RI_sim (similarity index) is the index to measure the convergence or divergence of the signals. In this embodiment, RI_sim must be bound between 0 and 1. Therefore, if RI_sim as calculated above is less than 0, it will be set to 0, and if it is higher than 1, it will be set to 1.
The mapping 3465 is performed by using ordinary linear regression (OLR). However, when OLR does not work well, a robust median slope linear regression (RMSLR) can be used. For Isig similarity index and 1 kHz real impedance index, for example, two mapping procedures are needed: (i) Map Isig similarity index to 1 kHz real impedance similarity index; and (ii) map 1 kHz real impedance similarity index to Isig similarity index. Both mapping procedures will generate two residuals: res12 and res21. Each of the dip reliability indices 3467, 3468 can then be calculated as:
RI_dip=1−(res12+res21)/(RI_sim_isig+RI_sim_1K_real_impedance).
The third factor is sensitivity loss 3470, which may be detected using 1 kHz imaginary impedance trending in, e.g., the past 8 hours. If one sensor's trending turns negative, the algorithm will rely on the other sensor. If both sensors lose sensitivity, then a simple average is taken. Trending may be calculated by using a strong low-pass filter to smooth over the 1 kHz imaginary impedance, which tends to be noisy, and by using a correlation coefficient or linear regression with respect to time during, e.g., the past 8 hours to determine whether the correlation coefficient is negative or the slope is negative. Each of the sensitivity loss reliability indices 3473, 3474 is then assigned a binary value of 1 or 0.
The total reliability index (RI) for each of we1, we2, . . . wen is calculated as follows:
Having calculated the respective reliability indices of the individual working electrodes, the weight for each of the electrodes may be calculated as follow:
Based on the above, the fused SG 3498 is then calculated as follows:
SG=weight_we1×SG_we1+weight_we2×SG_we2+weight_we3×SG_we3+weight_we4×SG_we4+ . . . +weight_wen×SG_wen
The last factor relates to artifacts in the final sensor readout, such as may be caused by instant weight change of sensor fusion. This may be avoided by either applying a low-pass filter 3480 to smooth the RI for each electrode, or by applying a low-pass filter to the final SG. When the former is used, the filtered reliability indices—e.g., RI_We1* and RI_We2* (3482, 3484)—are used in the calculation of the weight for each electrode and, therefore, in the calculation of the fused SG 3498.
In one closed-loop study involving a non-diabetic population, it was found that the above-described fusion algorithms provided considerable improvements in the Mean Absolute Relative Difference (MARD) both on Day 1, when low start-up issues are most significant and, as such, may have a substantial impact on sensor accuracy and reliability, and overall (i.e., over a 7-day life of the sensor). The study evaluated data for an 88% distributed layout design with high current density (nominal) plating using three different methodologies: (1) calculation of one sensor glucose value (SG) via fusion using Medtronic Minimed's Ferrari Algorithm 1.0 (which is a SG fusion algorithm as discussed above); (2) calculation of one SG by identifying the better ISIG value using 1 kHz EIS data (through the Isig fusion algorithm discussed above); and (3) calculation of one SG by using the higher ISIG value (i.e., without using EIS). The details of the data for the study are presented below:
(1) SG Based on Ferrari 1.0 Alg for 88% Distributed Layout with High Current Density (Nominal) Plating
Day
1
2
3
4
5
6
7
Total
Mean-ARD Percentage
040-080
19.39
17.06
22.27
17.50
37.57
11.43
19.69
080-120
19.69
09.18
09.34
08.64
10.01
08.31
11.33
11.56
120-240
19.01
17.46
12.44
07.97
11.75
08.82
12.15
12.92
240-400
10.25
08.36
14.09
10.86
12.84
22.70
12.88
Total
19.52
11.71
10.14
09.30
10.83
09.49
11.89
12.28
Mean-Absolute Bias (sg-bg)
040-080
14.86
11.78
15.81
11.07
29.00
07.26
14.05
080-120
19.53
09.37
09.49
08.78
09.88
08.44
11.61
11.62
120-240
30.04
29.73
19.34
14.45
18.25
12.66
18.89
20.60
240-400
26.75
22.23
39.82
29.00
33.00
61.36
35.19
Total
21.62
15.20
12.79
13.21
12.04
10.84
15.04
14.79
Mean-Signed Bias (sg-bg)
040-080
12.15
09.78
15.81
11.07
29.00
07.26
13.01
080-120
−04.45
−04.92
−00.90
00.18
01.21
00.85
00.03
−01.44
120-240
−10.18
−27.00
−16.89
−02.91
−05.40
−01.24
−11.58
−10.71
240-400
11.25
02.23
−00.07
−27.00
−33.00
−61.36
−10.29
Total
−04.81
−09.77
−05.09
−00.23
−00.22
00.67
−04.98
−03.56
Eval Points
040-080
007
004
000
002
006
003
004
026
080-120
090
064
055
055
067
056
047
434
120-240
028
025
022
021
016
032
026
170
240-400
000
002
004
008
003
001
002
020
Total
125
095
081
086
092
092
079
650
(2) SG Based on Better ISIG Using 1 kHz EIS for 88% Distributed Layout with High Current Density (Nominal) Plating
Day
1
2
3
4
5
6
7
Total
Mean-ARD Percentage
040-080
16.66
18.78
21.13
16.21
43.68
09.50
18.14
080-120
16.22
11.96
08.79
10.49
09.75
08.04
10.34
11.36
120-240
15.08
17.50
12.68
07.72
08.74
08.84
13.02
12.16
240-400
07.66
06.42
11.10
07.52
15.95
21.13
09.84
Total
15.96
13.70
09.92
09.95
09.96
09.40
11.31
11.83
Mean-Absolute Bias (sg-bg)
040-080
12.71
13.00
15.00
10.17
33.50
06.00
12.83
080-120
15.70
12.17
08.57
10.89
09.62
08.26
10.49
11.32
120-240
24.43
29.82
19.43
13.79
14.60
12.97
20.27
19.58
240-400
20.00
17.00
32.50
20.00
41.00
60.00
27.29
Total
17.72
17.20
12.56
13.55
10.95
11.21
14.12
14.20
Mean-Signed Bias (sg-bg)
040-080
08.71
13.00
15.00
10.17
33.50
06.00
11.67
080-120
−04.30
−8.62
−01.11
−03.64
02.52
00.40
−01.56
−02.52
120-240
−11.30
−29.64
−17.09
−08.74
−10.87
−07.23
−15.09
−14.05
240-400
20.00
00.50
09.50
−17.33
−41.00
−60.00
−03.18
Total
−05.30
−12.56
−06.20
−03.63
−00.10
−02.29
−06.35
−05.21
Eval Points
040-080
007
004
000
001
006
002
004
024
080-120
082
053
044
045
058
043
041
366
120-240
030
022
023
019
015
030
022
161
240-400
000
002
004
006
003
001
001
017
Total
119
081
071
071
082
076
068
568
(3) SG Based on Higher ISIG for 88% Distributed Layout with High Current Density (Nominal) Plating
Day
1
2
3
4
5
6
7
Total
Mean-ARD Percentage
040-080
17.24
19.13
21.13
17.31
43.68
10.38
18.79
080-120
17.69
11.77
09.36
10.70
10.19
08.34
10.68
11.86
120-240
16.80
17.63
13.04
07.38
09.04
08.52
13.25
12.50
240-400
07.47
06.02
10.85
07.52
15.95
21.13
09.63
Total
17.44
13.60
10.37
10.00
10.40
09.36
11.66
12.26
Mean-Absolute Bias (sg-bg)
040-080
13.14
13.25
15.00
11.00
33.50
06.50
13.29
080-120
17.23
11.98
09.22
11.02
10.08
08.59
10.86
11.85
120-240
27.40
30.09
19.75
13.26
14.93
12.45
20.65
20.09
240-400
19.50
16.00
32.00
20.00
41.00
60.00
26.82
Total
19.53
17.09
13.00
13.35
11.37
11.18
14.53
14.67
Mean-Signed Bias (sg-bg)
040-080
08.29
12.75
15.00
11.00
33.50
06.50
11.79
080-120
−04.72
−08.83
−02.35
−01.56
01.75
−00.18
−01.52
−02.70
120-240
−15.13
−29.73
−17.67
−08.42
−11.47
−07.03
−15.43
−14.86
240-400
19.50
01.50
06.33
−17.33
−41.00
−60.00
−04.12
Total
−06.57
−12.70
−07.11
−02.46
−00.63
−02.56
−06.47
−05.57
Eval Points
040-080
007
004
000
001
006
002
004
024
080-120
083
054
046
048
060
044
042
377
120-240
030
022
024
019
015
031
023
164
240-400
000
002
004
006
003
001
001
017
Total
120
082
074
074
084
078
070
582
With the above data, it was found that, with the first approach, the MARD (%) on Day 1 was 19.52%, with an overall MARD of 12.28%. For the second approach, the Day-1 MARD was 15.96% and the overall MARD was 11.83%. Lastly, for the third approach, the MARD was 17.44% on Day 1, and 12.26% overall. Thus, for this design with redundant electrodes, it appears that calculation of SG based on the better ISIG using 1 kHz EIS (i.e., the second methodology) provides the greatest advantage. Specifically, the lower Day-1 MARD may be attributable, e.g., to better low start-up detection using EIS. In addition, the overall MARD percentages are more than 1% lower than the overall average MARD of 13.5% for WE1 and WE2 in this study. It is noted that, in the above-mentioned approaches, data transitions may be handled, e.g., by a filtering method to minimize the severity of the transitions, such as by using a low-pass filter 3480 as discussed above in connection with
It bears repeating that sensor diagnostics, including, e.g., assessment of low start-up, sensitivity-loss, and signal-dip events depends on various factors, including the sensor design, number of electrodes (i.e., redundancy), electrode distribution/configuration, etc. As such, the actual frequency, or range of frequencies, for which an EIS-based parameter may be substantially glucose-independent, and therefore, an independent marker, or predictor, for one or more of the above-mentioned failure modes may also depend on the specific sensor design. For example, while it has been discovered, as described hereinabove, that sensitivity loss may be predicted using imaginary impedance at the relatively higher frequencies—where imaginary impedance is substantially glucose-independent—the level of glucose dependence, and, therefore, the specific frequency range for using imaginary impedance as a marker for sensitivity loss, may shift (higher or lower) depending on the actual sensor design.
More specifically, as sensor design moves more and more towards the use of redundant working electrodes, the latter must be of increasingly smaller sizes in order to maintain the overall size of the sensor. The size of the electrodes, in turn, affects the frequencies that may be queried for specific diagnostics. In this regard, it is important to note that the fusion algorithms described herein and shown in
In addition, experimental data indicates that human tissue structure may also affect glucose dependence at different frequencies. For example, in children, real impedance at 0.105 Hz has been found to be a substantially glucose-independent indicator for low start-up detection. It is believed that this comes about as a result of a child's tissue structure changing, e.g., the Warburg impedance, which relates mostly to the resistive component. See also the subsequent discussion relating to interferent detection.
Embodiments of the invention herein are also directed to the use of EIS in optimizing sensor calibration. By way of background, in current methodologies, the slope of a BG vs. Isig plot, which may be used to calibrate subsequent Isig values, is calculated as follows:
where α is an exponential function of a time constant, β is a function of blood glucose variance, and offset is a constant. For a sensor in steady condition, this method provides fairly accurate results. As shown, e.g., in
However, there are situations in which the above-mentioned linear relationship does not hold true, such as, e.g., during periods in which the sensor experiences a transition. As shown in
To address this issue, one embodiment of the invention is directed to the use of an EIS-based dynamic offset, where EIS measurements are used to define a sensor status vector as follows:
V={real_imp_1K,img_imp_1K,Nyquist_slope,Nyquist_R_square}
where all of the elements in the vector are substantially BG independent. It is noted that Nyquist_R_square is the R square of linear regression used to calculate the Nyquist slope, i.e., the square of the correlation coefficient between real and imaginary impedances at relatively-lower frequencies, and a low R square indicates abnormality in sensor performance. For each Isig-BG pair, a status vector is assigned. If a significant difference in status vector is detected—e.g., |V2−V3| for the example shown in
In a second embodiment, an EIS-based segmentation approach may be used for calibration. Using the example of
Isig_buffer1=[Isig1,Isig2]; BG_buffer1=[BG1,BG2]
Isig_buffer2=[Isig3,Isig3]; BG_buffer2=[BG3,BG3]
Thus, when the sensor operates during 1 and 2, Isig_buffer1 and BG_buffer1 would be used for calibration. However, when the sensor operates during 3 and 4, i.e., during a transition period, Isig_buffer2 and BG_buffer2 would be used for calibration.
In yet another embodiment, an EIS-based dynamic slope approach, where EIS is used to adjust slope, may be used for calibration purposes.
In a further embodiment, EIS diagnostics may be used to determine the timing of sensor calibrations, which is quite useful for, e.g, low-startup events, sensitivity-loss events, and other similar situations. As is known, most current methodologies require regular calibrations based on a pre-set schedule, e.g., 4 times per day. Using EIS diagnostics, however, calibrations become event-driven, such that they may be performed only as often as necessary, and when they would be most productive. Here, again, the status vector V may be used to determine when the sensor state has changed, and to request calibration if it has, indeed, changed.
More specifically, in an illustrative example,
When, on the other hand, the 1 kHz real impedance and the Nyquist slope are higher than their corresponding upper bounds (or threshold values), RI_startup=0 (i.e., it is “low”), and the sensor is not ready for calibration (3856), i.e., a low start-up issue may exist. Here, the trend of 1 kHz real impedance and the Nyquist slope can be used to predict when both parameters will be in range (3870). If it is estimated that this will only take a very short amount of time (e.g., less than one hour), then the algorithm waits until the sensor is ready, i.e., until the above-mentioned EIS-based parameters are in-bound (3874), at which point the algorithm proceeds to calibration. If, however, the wait time would be relatively long (3876), then the sensor can be calibrated now, and then the slope or offset can be gradually adjusted according to the 1 kHz real impedance and the Nyquist slope trend (3880). It is noted that by performing the adjustment, serious over- or under-reading caused by low start-up can be avoided. As noted previously, the EIS-based parameters and related information that is used in the instant calibration algorithm is substantially glucose-independent.
It is noted that, while the above description in connection with
In yet another embodiment, EIS can aid in the adjustment of the calibration buffer. For existing calibration algorithms, the buffer size is always 4, i.e., 4 Isig-BG pairs, and the weight is based upon α which, as noted previously, is an exponential function of a time constant, and β, which is a function of blood glucose variance. Here, EIS can help to determine when to flush the buffer, how to adjust buffer weight, and what the appropriate buffer size is.
Embodiments of the invention are also directed to the use of EIS for interferent detection. Specifically, it may be desirable to provide a medication infusion set that includes a combination sensor and medication-infusion catheter, where the sensor is placed within the infusion catheter. In such a system, the physical location of the infusion catheter relative to the sensor may be of some concern, due primarily to the potential impact on (i.e., interference with) sensor signal that may be caused by the medication being infused and/or an inactive component thereof.
For example, the diluent used with insulin contains m-cresol as a preservative. In in-vitro studies, m-cresol has been found to negatively impact a glucose sensor if insulin (and, therefore, m-cresol) is being infused in close proximity to the sensor. Therefore, a system in which a sensor and an infusion catheter are to be combined in a single needle must be able to detect, and adjust for, the effect of m-cresol on the sensor signal. Since m-cresol affects the sensor signal, it would be preferable to have a means of detecting this interferent independently of the sensor signal itself.
Experiments have shown that the effect of m-cresol on the sensor signal is temporary and, thus, reversible. Nevertheless, when insulin infusion occurs too close to the sensor, the m-cresol tends to “poison” the electrode(s), such that the latter can no longer detect glucose, until the insulin (and m-cresol) have been absorbed into the patient's tissue. In this regard, it has been found that there is typically about a 40-minute time period between initiation of insulin infusion and when the sensor has re-gained the ability to detect glucose again. However, advantageously, it has also been discovered that, during the same time period, there is a large increase in 1 kHz impedance magnitude quite independently of the glucose concentration.
Specifically,
On the other hand, the m-cresol had a dramatic effect on both impedance magnitude and phase.
The above experiment identifies an important practical pitfall of continuing to rely on the Isig after m-cresol has been added. Referring back to
As can be seen from the above experiments, EIS can be used to detect the presence of an interfering agent—in this case, m-cresol. Specifically, since the interferent affects the sensor in such a way as to increase the impedance magnitude across the entire frequency spectrum, the impedance magnitude may be used to detect the interference. Once the interference has been detected, either the sensor operating voltage can be changed to a point where the interferent is not measured, or data reporting can be temporarily suspended, with the sensor indicating to the patient/user that, due to the administration of medication, the sensor is unable to report data (until the measured impedance returns to the pre-infusion level). It is noted that, since the impact of the interferent is due to the preservative that is contained in insulin, the impedance magnitude will exhibit the same behavior as described above regardless of whether the insulin being infused is fast-acting or slow.
Importantly, as mentioned above, the impedance magnitude, and certainly the magnitude at 1 kHz, is substantially glucose-independent. With reference to
Embodiments of the invention are also directed to an Analog Front End Integrated Circuit (AE IC), which is a custom Application Specific Integrated Circuit (ASIC) that provides the necessary analog electronics to: (i) support multiple potentiostats and interface with multi-terminal glucose sensors based on either Oxygen or Peroxide; (ii) interface with a microcontroller so as to form a micropower sensor system; and (iii) implement EIS diagnostics, fusion algorithms, and other EIS-based processes based on measurement of EIS-based parameters. More specifically, the ASIC incorporates diagnostic capability to measure the real and imaginary impedance parameters of the sensor over a wide range of frequencies, as well as digital interface circuitry to enable bidirectional communication with a microprocessor chip. Moreover, the ASIC includes power control circuitry that enables operation at very low standby and operating power, and a real-time clock and a crystal oscillator so that an external microprocessor's power can be turned off.
TABLE 1
Pad signal descriptions
Pad Name
Functional Description
Power plane
VBAT
Battery power input 2.0 V to 4.5 V
VBAT
VDDBU
Backup logic power 1.4 to 2.4 V
VDDBU
VDD
Logic power-1.6-2.4 V
VDD
VDDA
Analog power-1.6-2.4 V
VDDA
VPAD
Pad I/O power-1.8 V-3.3 V
VPAD
VSS
Logic ground return and digital pad return
VSSA
Analog ground return and analog pad return
ADC_IN1, 2
ADC Inputs, VDDA max input
VDDA
V1P2B
1.2 volt reference Bypass capacitor
VDDA
nSHUTDN
External VDD regulator control signal. Goes low when battery is
VBAT
low.
VPAD_EN
Goes high when VPAD IOs are active. Can control external
VBAT
regulator.
DA1, 2
DAC outputs
VDDA
TP_ANA_MUX
Mux of analog test port-output or input
VDDA
TP_RES
External 1 meg ohm calibration resistor & analog test port
VDDA
WORK1-5
Working Electrodes of Sensor
VDDA
RE
Reference Electrode of Sensor
VDDA
COUNTER
Counter Electrode of Sensor
VDDA
CMP1_IN
General purpose Voltage comparator
VDDA
CMP2_IN
General purpose Voltage comparator
VDDA
WAKEUP
Debounced interrupt input
VBAT
XTALI, XTALO
32.768 kHz Crystal Oscillator pads
VDDA
OSC_BYPASS
Test clock control
VDDA
SEN_CONN_SW
Sensor connection switch input. Pulled to VSSA = connection
VDDA
VPAD_EN
Enable the VPAD power and VPAD power plane logic
VBAT
nRESET_OD
Signal to reset external circuitry such as a microprocessor
SPI_CK,
SPI interface signals to microprocessor
VPAD
nSPI_CS,
SPI_MOIS,
SPI_MISO
UP_WAKEUP
Microprocessor wakeup signal
VPAD
CLK_32 KHZ
Gated Clock output to external circuitry microprocessor
VPAD
UP_INT
Interrupt signal to microprocessor
VPAD
nPOR1_OUT
Backup Power on reset, output from analog
VBAT
nPOR1_IN
VBAT power plane reset, input to digital in battery plane
VBAT
(VDDBU)
nPOR2_OUT
VDD POR signal, output from analog
VDD
nPOR2_OUT_OD
VDD POR signal open drain (nfet out only), stretched output
VBAT
from digital
nPOR2_IN
VDD power plane logic reset. Is level shifted to VDD inside the
VDD
chip, input to digital VDD logic.
The ASIC will now be described with reference to
Power Planes
The ASIC has one power plane that is powered by the supply pad VBAT (4210), which has an operating input range from 2.0 volts to 4.5 volts. This power plane has a regulator to lower the voltage for some circuits in this plane. The supply is called VDDBU (4212) and has an output pad for test and bypassing. The circuits on the VBAT supply include an RC oscillator, real time clock (RC osc) 4214, battery protection circuit, regulator control, power on reset circuit (POR), and various inputs/outputs. The pads on the VBAT power plane are configured to draw less than 75 nA at 40° C. and VBAT=3.50V.
The ASIC also has a VDD supply to supply logic. The VDD supply voltage range is programmable from at least 1.6 volts to 2.4 volts. The circuits on the VDD power plane include most of the digital logic, timer (32 khz), and real time clock (32 khz). The VDD supply plane includes level shifters interfacing to the other voltage planes as necessary. The level shifters, in turn, have interfaces conditioned so that any powered power plane does not have an increase in current greater than 10 nA if another power plane is unpowered.
The ASIC includes an onboard regulator (with shutdown control) and an option for an external VDD source. The regulator input is a separate pad, REG_VDD_IN (4216), which has electrostatic discharge (ESD) protection in common with other I/Os on VBAT. The onboard regulator has an output pad, REG_VDD_OUT (4217). The ASIC also has an input pad for the VDD, which is separate from the REG_VDD_OUT pad.
The ASIC includes an analog power plane, called VDDA (4218), which is powered by either the VDD onboard regulator or an external source, and is normally supplied by a filtered VDD. The VDDA supplied circuits are configured to operate within 0.1 volt of VDD, thereby obviating the need for level shifting between the VDDA and VDD power planes. The VDDA supply powers the sensor analog circuits, the analog measurement circuits, as well as any other noise-sensitive circuitry.
The ASIC includes a pad supply, VPAD, for designated digital interface signals. The pad supply has an operating voltage range from at least 1.8 V to 3.3 V. These pads have separate supply pad(s) and are powered from an external source. The pads also incorporate level shifters to other onboard circuits to allow the flexible pad power supply range independently of the VDD logic supply voltage. The ASIC can condition the VPAD pad ring signals such that, when the VPAD supply is not enabled, other supply currents will not increase by more than 10 nA.
Bias Generator
The ASIC has a bias generator circuit, BIAS_GEN (4220), which is supplied from the VBAT power, and which generates bias currents that are stable with supply voltage for the system. The output currents have the following specifications: (i) Supply sensitivity: <+2.5% from a supply voltage of 1.6 v to 4.5V; and (ii) Current accuracy: <+3% after trimming.
The BIAS_GEN circuit generates switched and unswitched output currents to supply circuits needing a bias current for operation. The operating current drain of the BIAS_GEN circuit is less than 0.3 uA at 25° C. with VBAT from 2.5V-4.5V (excluding any bias output currents). Lastly, the temperature coefficient of the bias current is generally between 4,000 ppm/° C. and 6,000 ppm/° C.
Voltage Reference
The ASIC, as described herein is configured to have a low power voltage reference, which is powered from the VBAT power supply. The voltage reference has an enable input which can accept a signal from logic powered by VBAT or VDDBU. The ASIC is designed such that the enable signal does not cause any increase in current in excess of 10 nA from any supply from this signal interface when VBAT is powered.
The reference voltage has the following specifications: (i) Output voltage: 1.220±3 mV after trimming; (ii) Supply sensitivity: <±6 mV from 1.6 V to 4.5V input; (iii) Temperature sensitivity: <+5 mV from 0° C. to 60° C.; and (iv) Output voltage default accuracy (without trim): 1.220 V±50 mV. In addition, the supply current is to be less than 800 nA at 4.5V, 40° C. In this embodiment, the reference output will be forced to VSSA when the reference is disabled so as to keep the VDD voltage regulator from overshooting to levels beyond the breakdown voltage of the logic.
32 kHz Oscillator
The ASIC includes a low power 32.768 kHz crystal oscillator 4222 which is powered with power derived from the VDDA supply and can trim the capacitance of the crystal oscillator pads (XTALI, XTALO) with software. Specifically, the frequency trim range is at least −50 ppm to +100 ppm with a step size of 2 ppm max throughout the trim range. Here, a crystal may be assumed with a load capacitance of 7 pF, Ls=6.9512 kH, Cs=3.3952 fF, Rs=70 k, shunt capacitance=1 pF, and a PC Board parasitic capacitance of 2 pF on each crystal terminal.
The ASIC has a VPAD level output available on a pad, CLK_32 kHZ, where the output can be disabled under software and logic control. The default is driving the 32 kHz oscillator out. An input pin, OSC32K_BYPASS (4224), can disable the 32 kHz oscillator (no power drain) and allows for digital input to the XTALI pad. The circuits associated with this function are configured so as not add any ASIC current in excess of 10 nA in either state of the OSC32K_BYPASS signal other than the oscillator current when OSC32K_BYPASS is low.
The 32 kHZ oscillator is required to always be operational when the VDDA plane is powered, except for the bypass condition. If the OSC32K_BYPASS is true, the 32 KHZ oscillator analog circuitry is put into a low power state, and the XTALI pad is configured to accept a digital input whose level is from 0 to VDDA. It is noted that the 32 kHz oscillator output has a duty cycle between 40% and 60%.
Timer
The ASIC includes a Timer 4226 that is clocked from the 32 kHz oscillator divided by 2. It is pre-settable and has two programmable timeouts. It has 24 programmable bits giving a total time count to 17 minutes, 4 seconds. The Timer also has a programmable delay to disable the clock to the CLK_32 KHz pad and set the microprocessor (uP) interface signals on the VPAD plane to a predetermined state (See section below on Microprocessor Wakeup Control Signals). This will allow the microprocessor to go into suspend mode without an external clock. However, this function may be disabled by software with a programmable bit.
The Timer also includes a programmable delay to wakeup the microprocessor by enabling the CLK_32 KHZ clock output and setting UP_WAKEUP high. A transition of the POR2 (VDD POR) from supply low state to supply OK state will enable the 32 kHz oscillator, the CLK_32 KHZ clock output and set UP_WAKEUP high. The power shutdown and power up are configured to be controlled with programmable control bits.
Real Time Clock (RTC)
The ASIC also has a 48-bit readable/writeable binary counter that operates from the ungated, free running 32 kHz oscillator. The write to the real time clock 4228 requires a write to an address with a key before the clock can be written. The write access to the clock is configured to terminate between 1 msec and 20 msec after the write to the key address.
The real time clock 4228 is configured to be reset by a power on reset either by POR1_IN (the VBAT POR) or POR2_IN (the VDD_POR) to half count (MSB=1, all other bits 0). In embodiments of the invention, the real time clock has programmable interrupt capability, and is designed to be robust against single event upsets (SEUs), which may be accomplished either by layout techniques or by adding capacitance to appropriate nodes, if required.
RC Oscillator
The ASIC further includes an RC clock powered from the VBAT supply or VBAT derived supply. The RC Oscillator is always running, except that the oscillator can be bypassed by writing to a register bit in analog test mode (see section on Digital Testing) and applying a signal to the GPIO_VBAT with a 0 to VBAT level. The RC oscillator is not trimmable, and includes the following specifications: (i) a frequency between 750 Hz and 1500 Hz; (ii) a duty cycle between 50%±10%; (iii) current consumption of less than 200 nA at 25° C.; (iv) frequency change of less than ±2% from 1V to 4.5V VBAT supply and better than 1% from 1.8V to 4.5V VBAT supply; and (v) frequency change of less than +2, −2% from a temperature of 15° C. to 40° C. with VBAT=3.5V. The RC frequency can be measured with the 32 kHz crystal oscillator or with an external frequency source (See Oscillator Calibration Circuit).
Real Time RC Clock (RC Oscillator Based)
The ASIC includes a 48-bit readable/writeable binary ripple counter based on the RC oscillator. A write to the RC real time clock requires a write to an address with a key before the clock can be written. The write access to the clock terminates between 1 msec and 20 msec after the write to the key address, wherein the time for the protection window is configured to be generated with the RC clock.
The real time RC clock allows for a relative time stamp if the crystal oscillator is shutdown and is configured to be reset on POR1_IN (the BAT POR) to half count (MSB=1, all others 0). The real time RC clock is designed to be robust against single event upsets (SEUs) either by layout techniques or by adding capacitance to appropriate nodes, where required. On the falling edge of POR2_IN, or if the ASIC goes into Battery Low state, the RT real time clock value may be captured into a register that can be read via the SPI port. This register and associated logic are on the VBAT or VDDBU power plane.
Battery Protection Circuit
The ASIC includes a battery protection circuit 4230 that uses a comparator to monitor the battery voltage and is powered with power derived from the VBAT power plane. The battery protection circuit is configured to be always running with power applied to the VBAT supply. The battery protection circuit may use the RC oscillator for clocking signals and have an average current drain that is less than 30 nA, including a 3 MOhm total resistance external voltage divider.
The battery protection circuit uses an external switched voltage divider having a ratio of 0.421 for a 2.90V battery threshold. The ASIC also has an internal voltage divider with the ratio of 0.421±0.5%. This divider is connected between BATT_DIV_EN (4232) and VSSA (4234), and the divider output is a pin called BATT_DIV_INT (4236). To save pins in the packaged part, the BATT_DIV_INT in this embodiment is connected to BATT_DIV internally in the package. Also, in this configuration, BATT_DIV_EN does not need to come out of the package, saving two package pins.
The battery protection circuit is configured to sample the voltage on an input pin, BATT_DIV (4238), at approximately 2 times per second, wherein the sample time is generated from the RC Oscillator. The ASIC is able to adjust the divider of the RC Oscillator to adjust the sampling time interval to 0.500 sec±5 msec with the RC oscillator operating within its operating tolerance. In a preferred embodiment, the ASIC has a test mode which allows more frequent sampling intervals during test.
The comparator input is configured to accept an input from 0 to VBAT volts. The input current to the comparator input, BATT_DIV, is less than 10 nA for inputs from 0 to VBAT volts. The comparator sampling circuit outputs to a pad, BATT_DIV_EN, a positive pulse which can be used by external circuitry to enable an off-chip resistor divider only during the sampling time to save power. The voltage high logic level is the VBAT voltage and the low level is VSS level.
The output resistance of the BATT_DIV_EN pad shall be less than 2 kOhms at VBAT=3.0V. This allows the voltage divider to be driven directly from this output. After a programmable number of consecutive samples indicating a low battery condition, the comparator control circuitry triggers an interrupt to the interrupt output pad, UP_INT. The default number of samples is 4, although the number of consecutive samples is programmable from 4 to 120.
After a programmable number of consecutive samples indicating a low battery after the generation of the UP_INT above, the comparator control circuitry is configured to generate signals that will put the ASIC into a low power mode: The VDD regulator will be disabled and a low signal will be asserted to the pad, VPAD_EN. This will be called the Battery Low state. Again, the number of consecutive samples is programmable from 4 to 120 samples, with the default being 4 samples.
The comparator has individual programmable thresholds for falling and rising voltages on BATT_DIV. This is implemented in the digital logic to multiplex the two values to the circuit depending on the state of the Battery Low state. Thus, if Battery Low state is low, the falling threshold applies, and if the Battery Low state is high, the rising threshold applies. Specifically, the comparator has 16 programmable thresholds from 1.22 to 1.645±3%, wherein the DNL of the programmable thresholds is set to be less than 0.2 LSB.
The comparator threshold varies less than +/−1% from 20° C. to 40° C. The default threshold for falling voltage is 1.44V (VBAT threshold of 3.41V with nominal voltage divider), and the default threshold for rising voltage is 1.53V (VBAT threshold of 3.63V with nominal voltage divider). After the ASIC has been put into the Battery Low state, if the comparator senses 4 consecutive indications of battery OK, then the ASIC will initiate the microprocessor startup sequence.
Battery Power Plane Power on Reset
A power on reset (POR) output is generated on pad nPOR1_OUT (4240) if the input VBAT slews more than 1.2 volt in a 50 usec period or if the VBAT voltage is below 1.6±0.3 volts. This POR is stretched to a minimum pulse width of 5 milliseconds. The output of the POR circuit is configured to be active low and go to a pad, nPOR1_OUT, on the VBAT power plane.
The IC has an input pad for the battery power plane POR, nPOR1_IN (4242). This input pad has RC filtering such that pulses shorter than 50 nsec will not cause a reset to the logic. In this embodiment, nPOR1_OUT is externally connected to the nPOR1_IN in normal operation, thereby separating the analog circuitry from the digital circuitry for testing. The nPOR1_IN causes a reset of all logic on any of the power planes and initializes all registers to their default value. Thus, the reset status register POR bit is set, and all other reset status register bits are cleared. The POR reset circuitry is configured so as not to consume more than 0.1 uA from VBAT supply for time greater than 5 seconds after power up.
VDD Power on Reset (POR)
The ASIC also has a voltage comparator circuit which generates a VDD voltage plane reset signal upon power up, or if the VDD drops below a programmable threshold. The range is programmable with several voltage thresholds. The default value is 1.8V-15% (1.53V). The POR2 has a programmable threshold for rising voltage, which implements hysteresis. The rising threshold is also programmable, with a default value of 1.60V±3%.
The POR signal is active low and has an output pad, nPOR2_OUT (4244), on the VDD power plane. The ASIC also has an active low POR open drain output, nPOR2_OUT_OD (4246), on the VBAT power plane. This could be used for applying POR to other system components.
The VDD powered logic has POR derived from the input pad, nPOR2_IN (4248). The nPOR2_IN pad is on the VDD power plane and has RC filtering such that pulses shorter than 50 nsec will not cause a reset to the logic. The nPOR2_OUT is configured be externally connected to the nPOR2_IN input pad under normal usage, thereby separating the analog circuitry from the digital circuitry.
The reset which is generated is stretched to at least 700 msec of active time after VDD goes above the programmable threshold to assure that the crystal oscillator is stable. The POR reset circuitry is to consume no more than 0.1 uA from the VDD supply for time greater than 5 seconds after power up, and no more than 0.1 uA from VBAT supply for time greater than 5 seconds after power up. The register that stores the POR threshold value is powered from the VDD power plane.
Sensor Interface Electronics
In an embodiment of the invention, the sensor circuitry supports up to five sensor WORK electrodes (4310) in any combination of peroxide or oxygen sensors, although, in additional embodiments, a larger number of such electrodes may also be accommodated. While the peroxide sensor WORK electrodes source current, the oxygen sensor WORK electrodes sink current. For the instant embodiment, the sensors can be configured in the potentiostat configuration as shown in
The sensor electronics have programmable power controls for each electrode interface circuit to minimize current drain by turning off current to unused sensor electronics. The sensor electronics also include electronics to drive a COUNTER electrode 4320 that uses feedback from a RE (reference) electrode 4330. The current to this circuitry may be programmed off when not in use to conserve power. The interface electronics include a multiplexer 4250 so that the COUNTER and RE electrodes may be connected to any of the (redundant) WORK electrodes.
The ASIC is configured to provide the following Sensor Interfaces: (i) RE: Reference electrode, which establishes a reference potential of the solution for the electronics for setting the WORK voltages; (ii) WORK1-WORK5: Working sensor electrodes where desired reduction/oxidation (redox) reactions take place; and (iii) COUNTER: Output from this pad maintains a known voltage on the RE electrode relative to the system VSS. In this embodiment of the invention, the ASIC is configured so as to be able to individually set the WORK voltages for up to 5 WORK electrodes with a resolution and accuracy of better than or equal to 5 mV.
The WORK voltage(s) are programmable between at least 0 and 1.22V relative to VSSA in the oxygen mode. In the peroxide mode, the WORK voltage(s) are programmable between at least 0.6 volt and 2.054 volts relative to VSSA. If the VDDA is less than 2.15V, the WORK voltage is operational to VDDA −0.1V. The ASIC includes current measuring circuits to measure the WORK electrode currents in the peroxide sensor mode. This may be implemented, e.g., with current-to-voltage or current-to-frequency converters, which may have the following specifications: (i) Current Range: 0-300 nA; (ii) Voltage output range: Same as WORK electrode in peroxide/oxygen mode; (iii) Output offset voltage: ±5 mV max; and (iv) Uncalibrated resolution: ±0.25 nA.
Current Measurement Accuracy after applying a calibration factor to the gain and assuming an acquisition time of 10 seconds or less is:
For current-to-frequency converters (ItoFs) only, the frequency range may be between 0 Hz and 50 kHz. The current converters must operate in the specified voltage range relative to VSS of WORK electrodes in the peroxide mode. Here, the current drain is less than 2 uA from a 2.5V supply with WORK electrode current less than 10 nA per converter including digital-to-analog (DAC) current.
The current converters can be enabled or disabled by software control. When disabled, the WORK electrode will exhibit a very high impedance value, i.e., greater than 100 Mohm. Again, for ItoFs only, the output of the I-to-F converters will go to 32-bit counters, which can be read, written to, and cleared by the microprocessor and test logic. During a counter read, clocking of the counter is suspended to ensure an accurate read.
In embodiments of the invention, the ASIC also includes current measuring circuits to measure the WORK electrode currents in the oxygen sensor mode. The circuit may be implemented as a current-to-voltage or a current-to-frequency converter, and a programmable bit may be used to configure the current converters to operate in the oxygen mode. As before, the current converters must operate in the specified voltage range of the WORK electrodes relative to VSS in the oxygen mode. Here, again, the current range is 3.7 pA-300 nA, the voltage output range is the same as WORK electrode in oxygen mode, the output offset voltage is ±5 mV max, and the uncalibrated resolution is 3.7 pA±2 pA.
Current Measurement Accuracy after applying a calibration factor to the gain and assuming an acquisition time of 10 seconds or less is:
For current-to-frequency converters (ItoFs) only, the frequency range may be between 0 Hz and 50 kHz, and the current drain is less than 2 uA from a 2.5V supply with WORK electrode current less than 10 nA per converter, including DAC current. The current converters can be enabled or disabled by software control. When disabled, the WORK electrode will exhibit a very high impedance value, i.e., greater than 100 Mohm. Also, for ItoFs only, the output of the I-to-F converters will go to 32-bit counters, which can be read, written to, and cleared by the microprocessor and test logic. During a counter read, clocking of the counter is suspended to ensure an accurate read.
In embodiments of the invention, the Reference electrode (RE) 4330 has an input bias current of less than 0.05 nA at 40° C. The COUNTER electrode adjusts its output to maintain a desired voltage on the RE electrode. This is accomplished with an amplifier 4340 whose output to the COUNTER electrode 4320 attempts to minimize the difference between the actual RE electrode voltage and the target RE voltage, the latter being set by a DAC.
The RE set voltage is programmable between at least 0 and 1.80V, and the common mode input range of the COUNTER amplifier includes at least 0.20 to (VDD-0.20) V. A register bit may be used to select the common mode input range, if necessary, and to provide for programming the mode of operation of the COUNTER. The WORK voltage is set with a resolution and accuracy of better than or equal to 5 mV. It is noted that, in the normal mode, the COUNTER voltage seeks a level that maintains the RE voltage to the programmed RE target value. In the force counter mode, however, the COUNTER electrode voltage is forced to the programmed RE target voltage.
All electrode driving circuits are configured to be able to drive the electrode to electrode load and be free from oscillation for any use scenario.
During initialization, the drive current for WORK electrodes and the COUNTER electrode need to supply higher currents than for the normal potentiostat operation described previously. As such, programmable register bits may be used to program the electrode drive circuits to a higher power state if necessary for extra drive. It is important to achieve low power operation in the normal potentiostat mode, where the electrode currents are typically less than 300 nA.
In preferred embodiments, during initialization, the WORK1 through WORK5 electrodes are programmable in steps equal to, or less than, 5 mV from 0 to VDD volts, and their drive or sink current output capability is a minimum of 20 uA, from 0.20V to (VDD-0.20V). Also, during initialization, the ASIC is generally configured to be able to measure the current of one WORK electrode up to 20 uA with an accuracy of ±2% ±40 nA of the measurement value. Moreover, during initialization, the RE set voltage is programmable as described previously, the COUNTER DRIVE CIRCUIT output must be able to source or sink 50 uA minimum with the COUNTER electrode from 0.20V to (VDD-0.20V), and the supply current (VDD and VDDA) to the initialization circuitry is required to be less than 50 uA in excess of any output current sourced.
Current Calibrator
In embodiments of the invention, the ASIC has a current reference that can be steered to any WORK electrode for the purpose of calibration. In this regard, the calibrator includes a programmable bit that causes the current output to sink current or source current. The programmable currents include at least 10 nA, 100 nA, and 300 nA, with an accuracy of better than +1% ±1 nA, assuming a 0-tolerance external precision resistor. The calibrator uses a 1 MegOhm precision resistor connected to the pad, TP_RES (4260), for a reference resistance. In addition, the current reference can be steered to the COUNTER or RE electrodes for the purpose of initialization and/or sensor status. A constant current may be applied to the COUNTER or the RE electrodes and the electrode voltage may be measured with the ADC.
High Speed RC Oscillator
With reference back to
Analog to Digital Converter
The ASIC includes a 12-bit ADC (4264) with the following characteristics: (i) capability to effect a conversion in less than 1.5 msec with running from a 32 kHz clock; (ii) ability to perform faster conversions when clocked from the high speed RC oscillator; (iii) have at least 10 bits of accuracy (12 bit±4 counts); (iv) have a reference voltage input of 1.220V, with a temperature sensitivity of less than 0.2 mV/° C. from 20° C. to 40° C.; (v) full scale input ranges of 0 to 1.22V, 0 to 1.774V, 0 to 2.44V, and 0—VDDA, wherein the 1.774 and 2.44V ranges have programmable bits to reduce the conversion range to lower values to accommodate lower VDDA voltages; (vi) have current consumption of less than 50 uA from its power supply; (vi) have a converter capable of operating from the 32 kHz clock or the High Speed RC clock; (vii) have a DNL of less than 1 LSB; and (viii) issue an interrupt at the end of a conversion.
As shown in
The ASIC is configured such that the loading of the ADC will not exceed 0.01 nA for the inputs COUNTER, RE, WORK1-WORK5, the temperature sensor, and any other input that would be adversely affected by loading. The multiplexer includes a divider for any inputs that have higher voltage than the input voltage range of the ADC, and a buffer amplifier that will decrease the input resistance of the divided inputs to less than 1 nA for load sensitive inputs. The buffer amplifier, in turn, has a common mode input range from at least 0.8V to VDDA voltage, and an offset less than 3 mV from the input range from 0.8V to VDDA-0.1V.
In a preferred embodiment, the ASIC has a mode where the ADC measurements are taken in a programmed sequence. Thus, the ASIC includes a programmable sequencer 4266 that supervises the measurement of up to 8 input sources for ADC measurements with the following programmable parameters:
The sequencer 4266 is configured to start upon receiving an auto-measure start command, and the measurements may be stored in the ASIC for retrieval over the SPI interface. It is noted that the sequencer time base is programmable between the 32 kHz clock and the High-Speed RC oscillator 4262.
Sensor Diagnostics
As was previously described in detail, embodiments of the invention are directed to use of impedance and impedance-related parameters in, e.g., sensor diagnostic procedures and Isig/SG fusion algorithms. To that end, in preferred embodiments, the ASIC described herein has the capability of measuring the impedance magnitude and phase angle of any WORK sensor electrode to the RE and COUNTER electrode when in the potentiostat configuration. This is done, e.g., by measuring the amplitude and phase of the current waveform in response to a sine-like waveform superimposed on the WORK electrode voltage. See, e.g., Diagnostic Circuitry 4255 in
The ASIC has the capability of measuring the resistive and capacitive components of any electrode to any electrode via, e.g., the Electrode Multiplexer 4250. It is noted that such measurements may interfere with the sensor equilibrium and may require settling time or sensor initialization to record stable electrode currents. As discussed previously, although the ASIC may be used for impedance measurements across a wide spectrum of frequencies, for purposes of the embodiments of the invention, a relatively narrower frequency range may be used. Specifically, the ASIC's sine wave measurement capability may include test frequencies from about 0.10 Hz to about 8192 Hz. In making such measurements, the minimum frequency resolution in accordance with an embodiment of the invention may be limited as shown in Table 2 below:
TABLE 2
Min
Frequency
step
[Hz]
[Hz]
.1 to 15
<1
16 to 31
1
32 to 63
2
64 to 127
4
128 to 255
8
256 to 511
16
512 to 1023
32
1024 to 2047
64
2048 to 4095
128
4096 to 8192
256
The sinewave amplitude is programmable from at least 10 mVp-p to 50 mVp-p in 5 mV steps, and from 60 mVp-p to 100 mVp-p in 10 mV steps. In a preferred embodiment, the amplitude accuracy is better than ±5% or ±5 mV, whichever is larger. In addition, the ASIC may measure the electrode impedance with accuracies specified in Table 3 below:
TABLE 3
Impedance
Phase
Frequency
Impedance
Measurement
Measurement
Range
Range
Accuracy
Accuracy
1-10 Hz
2k to 1 MegΩ
±5%
±0.5°
10-100 Hz
1k to 100 kΩ
±5%
±0.5°
100 to 8000 Hz
.5k to 20 kΩ
±5%
±1.0°
In an embodiment of the invention, the ASIC can measure the input waveform phase relative to a time base, which can be used in the impedance calculations to increase the accuracy. The ASIC may also have on-chip resistors to calibrate the above electrode impedance circuit. The on-chip resistors, in turn, may be calibrated by comparing them to the known 1 MegOhm off-chip precision resistor.
Data sampling of the waveforms may also be used to determine the impedances. The data may be transmitted to an external microprocessor with the serial peripheral interface (SPI) for calculation and processing. The converted current data is sufficiently buffered to be able to transfer 2000 ADC conversions of data to an external device through the SPI interface without losing data. This assumes a latency time of 8 msec maximum for servicing a data transfer request interrupt.
In embodiments of the invention, rather than, or in addition to, measuring electrode impedance with a sine wave, the ASIC may measure electrode current with a step input. Here, the ASIC can supply programmable amplitude steps from 10 to 200 mV with better than 5 mV resolution to an electrode and sample (measure) the resulting current waveform. The duration of the sampling may be programmable to at least 2 seconds in 0.25 second steps, and the sampling interval for measuring current may include at least five programmable binary weighted steps approximately 0.5 msec to 8 msec.
The resolution of the electrode voltage samples is smaller than 1 mV with a range up to 0.25 volt. This measurement can be with respect to a suitable stable voltage in order to reduce the required dynamic range of the data conversion. Similarly, the resolution of the electrode current samples is smaller than 0.04 uA with a range up to 20 uA. The current measurements can be unipolar if the measurement polarity is programmable.
In embodiments of the invention, the current measurement may use an I-to-V converter. Moreover, the ASIC may have on-chip resistors to calibrate the current measurement. The on-chip resistors, in turn, may be calibrated by comparing them to the known 1 MegOhm off-chip precision resistor. The current measurement sample accuracy is better than ±3% or ±10 nA, whichever is greater. As before, the converted current data is sufficiently buffered to be able to transfer 2000 ADC conversions of data to an external device through the SPI interface without losing data. This assumes a latency time of 8 msec maximum for servicing a data transfer request interrupt.
Calibration Voltage
The ASIC includes a precision voltage reference to calibrate the ADC. The output voltage is 1.000V±3% with less than ±1.5% variation in production, and stability is better than ±3 mV over a temperature range of 20° C. to 40° C. This precision calibration voltage may be calibrated, via the on-chip ADC, by comparing it to an external precision voltage during manufacture. In manufacturing, a calibration factor may be stored in a system non-volatile memory (not on this ASIC) to achieve higher accuracy.
The current drain of the calibration voltage circuit is preferably less than 25 uA. Moreover, the calibration voltage circuit is able to power down to less than 10 nA to conserve battery power when not in use.
Temperature Sensor
The ASIC has a temperature transducer having a sensitivity between 9 and 11 mV per degree Celsius between the range −10° C. to 60° C. The output voltage of the Temperature Sensor is such that the ADC can measure the temperature-related voltage with the 0 to 1.22V ADC input range. The current drain of the Temperature Sensor is preferably less than 25 uA, and the Temperature Sensor can power down to less than 10 nA to conserve battery power when not in use.
VDD Voltage Regulator
The ASIC has a VDD voltage regulator with the following characteristics:
TABLE 4
Hex
vout
hex
vout
0
1.427
10
1.964
1
1.460
11
1.998
2
1.494
12
2.032
3
1.528
13
2.065
4
1.561
14
2.099
5
1.595
15
2.132
6
1.628
16
2.166
7
1.662
17
2.200
8
1.696
18
2.233
9
1.729
19
2.267
A
1.763
1A
2.300
B
1.796
1B
2.334
C
1.830
1C
2.368
D
1.864
1D
2.401
E
1.897
1E
2.435
F
1.931
1F
2.468
The ASIC includes at least two comparators 4270, 4271 powered from VDDA. The comparators use 1.22V as a reference to generate the threshold. The output of the comparators can be read by the processor and will create a maskable interrupt on the rising or falling edge determined by configuration registers.
The comparators have power control to reduce power when not in use, and the current supply is less than 50 nA per comparator. The response time of the comparator is preferably less than 50 usec for a 20 mV overdrive signal, and the offset voltage is less than ±8 mV.
The comparators also have programmable hysteresis, wherein the hysteresis options include threshold=1.22V+Vhyst on a rising input, threshold=1.22-Vhyst on a falling input, or no hysteresis (Vhyst=25±10 mV). The output from either comparator is available to any GPIO on any power plane. (See GPIO section).
Sensor Connection Sensing Circuitry on RE
An analog switched capacitor circuit monitors the impedance of the RE connection to determine if the sensor is connected. Specifically, a capacitor of about 20 pF is switched at a frequency of 16 Hz driven by an inverter with an output swing from VSS to VDD. Comparators will sense the voltage swing on the RE pad and, if the swing is less than a threshold, the comparator output will indicate a connection. The above-mentioned comparisons are made on both transitions of the pulse. A swing below threshold on both transitions is required to indicate a connect, and a comparison indicating high swing on either phase will indicate a disconnect. The connect signal/disconnect signal is debounced such that a transition of its state requires a stable indication to the new state for at least ½ second.
The circuit has six thresholds defined by the following resistances in parallel with a 20 pF capacitor: 500 k, 1 Meg, 2 MEG, 4 Meg, 8 Meg, and 16 Meg ohms. This parallel equivalent circuit is between the RE pad and a virtual ground that can be at any voltage between the power rails. The threshold accuracy is better than ±30%.
The output of the Sensor Connect sensing circuitry is able to programmably generate an interrupt or processor startup if a sensor is connected or disconnected. This circuit is active whenever the nPOR2_IN is high and the VDD and VDDA are present. The current drain for this circuit is less than 100 nA average.
WAKEUP Pad
The WAKEUP circuitry is powered by the VDD supply, with an input having a range from 0V to VBAT. The WAKEUP pad 4272 has a weak pulldown of 80±40 nA. This current can be derived from an output of the BIAS_GEN 4220. The average current consumed by the circuit is less than 50 nA with 0 v input.
The WAKEUP input has a rising input voltage threshold, Vih, of 1.22±0.1 V, and the falling input threshold is −25 mV±12 mV that of the rising threshold. In preferred embodiments, the circuit associated with the WAKEUP input draws no more than 100 nA for any input whose value is from −0.2 to VBAT voltage (this current excludes the input pulldown current). The WAKEUP pad is debounced for at least ½ second.
The output of the WAKEUP circuit is able to programmably generate an interrupt or processor startup if the WAKEUP pad changes state. (See the Event Handler section). It is important to note that the WAKEUP pad circuitry is configured to assume a low current, <1 nA, if the Battery Protection Circuit indicates a low battery state.
UART WAKEUP
The ASIC is configured to monitor the nRX_EXT pad 4274. If the nRX_EXT level is continuously high (UART BREAK) for longer than ½ second, a UART WAKEUP event will be generated. The due to sampling the UART WAKEUP event could be generated with a continuous high as short as ¼ second. The UART WAKEUP event can programmably generate an interrupt, WAKEUP and/or a microprocessor reset (nRESET_OD). (See the Event Handler section).
In preferred embodiments, the circuit associated with the UART WAKEUP input draws no more than 100 nA, and the UART WAKEUP pad circuitry is configured to assume a low current, <1 nA, if the Battery Protection circuitry indicates a Battery Low state. The UART Wakeup input has a rising input voltage threshold, Vih, of 1.22±0.1 V. The falling input threshold is −25 mV±12 mV that of the rising threshold.
Microprocessor Wakeup Control Signals
The ASIC is able to generate signals to help control the power management of a microprocessor. Specifically, the ASIC may generate the following signals:
The ASIC has GPIO1 and GPIO0 pads able to act as boot mode control for a microprocessor. A POR2 event will reset a 2 bit counter whose bits map to GPIO1 & GPIO0 (MSB, LSB respectively). A rising edge of UART break increments the counter by one, wherein the counter counts by modulo 4, and goes to zero if it is incremented in state 11. The boot mode counter is pre-settable via SPI.
Event Handler/Watchdog
The ASIC incorporates an event handler to define the responses to events, including changes in system states and input signals. Events include all sources of interrupts (e.g. UART_BRK, WAKE_UP, Sensor Connect, etc. . . . ). The event handler responses to stimuli are programmable by the software through the SPI interface. Some responses, however, may be hardwired (non-programmable).
The event handler actions include enable/disable VPAD_EN, enable/disable CLK 32 KHZ, assert nRESET_OD, assert UP_WAKEUP, and assert UP_INT. The Event Watchdog Timer 1 through Timer 5 are individually programmable in 250 msec increments from 250 msec to 16,384 seconds. The timeouts for Event Watchdog timers 6 through 8 are hardcoded. The timeout for Timer6 and Timer7 are 1 minute; timeout for Timer8 is 5 minutes.
The ASIC also has a watchdog function to monitor the microprocessor's responses when triggered by an event. The event watchdog is activated when the microprocessor fails to acknowledge the event induced activities. The event watchdog, once activated, performs a programmable sequence of actions, Event Watchdog Timer 1-5, and followed by a hard-wired sequence of actions, Event Watchdog Timer 6-8, to re-gain the response of the microprocessor. The sequence of actions includes interrupt, reset, wake up, assert 32 KHz clock, power down and power up to the microprocessor.
During the sequences of actions, if the microprocessor regains its ability to acknowledge the activities that had been recorded, the event watchdog is reset. If the ASIC fails to obtain an acknowledgement from the microprocessor, the event watchdog powers down the microprocessor in a condition that will allow UART_BRK to reboot the microprocessor and it will activate the alarm. When activated, the alarm condition generates a square wave with a frequency of approximately 1 kHz on the pad ALARM with a programmable repeating pattern. The programmable pattern has two programmable sequences with programmable burst on and off times. The alarm has another programmable pattern that may be programmed via the SPI port. It will have two programmable sequences with programmable burst on and off times.
Digital to Analog (D/A)
In a preferred embodiment, the ASIC has two 8 bit D/A converters 4276, 4278 with the following characteristics:
The TX_EXT_OD 4280 is an open drain output whose input is the signal on the TX_UP input pad. This will allow the TX_EXT_OD pad to be open in the UART idle condition. The TX_EXT_OD pad has a comparator monitoring its voltage. If the voltage is above the comparator threshold voltage for a debounce period (¼ second), the output, nBAT_CHRG_EN (4281), will go low. This comparator and other associated circuitry with this function are on the VBAT and/or VDDBU planes.
The circuitry associated with this function must allow lows on TX_EXT_OD pad that result from normal communication with an external device without disabling the assertion of nBAT_CHRG_EN. If POR1 is active, nBAT_CHRG_EN will be high (not asserted). The comparator's threshold voltage is between 0.50V and 1.2V. The comparator will have hysteresis; The falling threshold is approximately 25 mV lower than the rising threshold.
The nRX_EXT pad inverts the signal on this pad and output it to RX_UP. In this way, the nRX_EXT signal will idle low. The nRX_EXT must accept inputs up to VBAT voltage. The nRX_EXT threshold is 1.22V±3%. The output of this comparator will be available over the SPI bus for a microprocessor to read.
The nRX_EXT pad also incorporates a means to programmably source a current, which will be 80±30 nA, with the maximum voltage being VBAT. The ASIC layout has mask programmable options to adjust this current from 30 nA to 200 nA in less than 50 nA steps with a minimal number of mask layer changes. A programmable bit will be available to block the UART break detection and force the RX_UP high. In normal operation, this bit will be set high before enabling the current sourcing to nRX_EXT and then set low after the current sourcing is disabled to ensure that no glitches are generated on RX_UP or that a UART break event is generated. Note to implement a wet connector detector, while the current source into nRX_EXT is active, an RX comparator output indicating a low input voltage would indicate leakage current. The ASIC includes a pulldown resistor approximately 100 k ohms on the nRX_EXT pad. This pulldown will be disconnected when the current source is active.
Sensor Connect Switch
The ASIC shall have a pad, SEN_CONN_SW (4282), which is able to detect a low resistance to VSS (4284). The SEN_CONN_SW sources a current from 5 to 25 uA with SEN_CONN_SW=0V and has a maximum open circuit voltage of 0.4V. The ASIC layout has mask programmable options to adjust this current from 1 uA to 20 uA in less than 5 uA steps with a minimal number of mask layer changes. The SEN_CONN_SW has associated circuitry that detects the presence of a resistance between SEN_CONN_SW and VSSA (4234) whose threshold is between 2 k and 15 k ohms. The average current drain of this circuit is 50 nA max. Sampling must be used to achieve this low current.
Oscillator Calibration Circuit
The ASIC has counters whose inputs can be steered to internal or external clock sources. One counter generates a programmable gating interval for the other counter. The gating intervals include 1 to 15 seconds from the 32 kHz oscillator. The clocks that can be steered to either counter are 32 kHz, RC oscillator, High Speed RC oscillator, and an input from any GPIO pad.
Oscillator Bypassing
The ASIC can substitute external clocks for each of the oscillators' outputs. The ASIC has a register that can be written only when a specific TEST_MODE is asserted. This register has bits to enable the external input for the RC Oscillator, and may be shared with other analog test control signals. However, this register will not allow any oscillator bypass bits to be active if the TEST_MODE is not active.
The ASIC also has an input pad for an external clock to bypass the RC Oscillator. The pad, GPIO_VBAT, is on the VBAT power plane. The ASIC further includes a bypass enable pad for the 32 KHZ oscillator, OSC32K_BYPASS. When high, the 32 KHZ oscillator output is supplied by driving the OSC32 KHZ_IN pad. It is noted that, normally, the OSC32 KHZ_IN pad is connected to a crystal.
The ASIC has inputs for an external clock to bypass the HS_RC_OSC. The bypass is enabled by a programmable register bit. The HS_RC_OSC may be supplied programmably by either the GPIO on the VDD plane or by GPIOs on the VPAD plane.
SPI Slave Port
The SPI slave port includes an interface consisting of a chip select input (SPI_nCS) 4289, a clock input (SPI_CK) 4286, a serial data input (SPI MOSI) 4287, and a serial data output (SPI_MISO) 4288. The chip select input (SPI_nCS) is an active low input, asserted by an off-chip SPI master to initiate and qualify an SPI transaction. When SPI_nCS is asserted low, the SPI slave port configures itself as a SPI slave and performs data transactions based on the clock input (SPICK). When SPI_nCS is inactive, the SPI slave port resets itself and remains in reset mode. As this SPI interface supports block transfers, the master should keep SPI_nCS low until the end of a transfer.
The SPI clock input (SPI_CK) will always be asserted by the SPI master. The SPI slave port latches the incoming data on the SPI_MOSI input using the rising edge of SPI_CK and driving the outgoing data on the SPI_MISO output using the falling edge of SPI_CK. The serial data input (SPI_MOSI) is used to transfer data from the SPI master to the SPI slave. All data bits are asserted following the falling edge of SPI_CK. The serial data output (SPI_MISO) is used to transfer data from the SPI slave to the SPI master. All data bits are asserted following the falling edge of SPI_CK.
SPI_nCS, SPI_CK and SPI_MOSI are always driven by the SPI master, unless the SPI master is powered down. If VPAD_EN is low, these inputs are conditioned so that the current drain associated with these inputs is less than 10 nA and the SPI circuitry is held reset or inactive. SPI_MISO is only driven by the SPI slave port when SPI_nCS is active, otherwise, SPI_MISO is tri-stated.
The chip select (SPI_nCS) defines and frames the data transfer packet of an SPI data transaction. The data transfer packet consists of three parts. There is a 4-bit command section followed by a 12-bit address section, which is then followed by any number of 8-bit data bytes. The command bit 3 is used as the direction bit. A “1” indicates a write operation, and a “0” indicates a read operation. The combinations of command bit 2, 1 and 0 have the following definitions. Unused combinations are undefined.
The 12-bit address section defines the starting byte address. If SPI_nCS stays active after the first data byte, to indicate a multi-byte transfer, the address is incremented by one after each byte is transferred. Bit<11> of the address (of address<11:0>) indicates the highest address bit. The address wraps around after reaching the boundary.
Data is in the byte format, and a block transfer can be performed by extending SPI_nCS to allow all bytes to be transferred in one packet.
Microprocessor Interrupt
The ASIC has an output at the VPAD logic level, UP_INT, for the purpose of sending interrupts to a host microprocessor. The microprocessor interrupt module consists of an interrupt status register, an interrupt mask register, and a function to logically OR all interrupt statuses into one microprocessor interrupt. The interrupt is implemented to support both edge sensitive and level sensitive styles. The polarity of the interrupt is programmable. The default interrupt polarity is TBD.
In a preferred embodiment, all interrupt sources on the AFE ASIC will be recorded in the interrupt status register. Writing a “1” to the corresponding interrupt status bit clears the corresponding pending interrupt. All interrupt sources on the AFE ASIC are mask-able through the interrupt mask register. Writing a “1” to the corresponding interrupt mask bit enables the masking of the corresponding pending interrupt. Writing a “0” to the corresponding interrupt mask bit disables the masking of the corresponding interrupt. The default state of the interrupt mask register is TBD.
General Purpose Input/Outputs (GPIOs)/Parallel Test Port
In embodiments of the invention, the ASIC may have eight GPIOs that operate on VPAD level signals. The ASIC has one GPIO that operates on a VBAT level signal, and one GPIO that operates on a VDD level signal. All off the GPIOs have at least the following characteristics:
A Parallel Test Port shares the 8-bit GPIOs on the VPAD voltage plane. The test port will be used for observing register contents and various internal signals. The outputs of this port are controlled by the port configuration register in the normal mode. Writing 8′hFF to both GPIO_O1S_REG & GPIO_O2S_REG registers will steer the test port data on the GPIO outputs, while writing 8′h00 to the GPIO_ON_REG register will disable the test port data and enable the GPIO data onto the GPIO outputs.
Registers and pre-grouped internal signals can be observed over this test port by addressing the target register through the SPI slave port. The SPI packet has the command bits set to 4′b0011 followed by the 12-bit target register address. The parallel test port continues to display the content of the addressed register until the next Test Port Addressing command is received.
Analog Test Ports
The IC has a multiplexer feeding the pad, TP_ANAMUX (4290), which will give visibility to internal analog circuit nodes for testing. The IC also has a multiplexer feeding the pad, TP_RES (4260), which will give visibility to internal analog circuit nodes for testing. This pad will also accommodate a precision 1 meg resistor in usual application to perform various system calibrations.
Chip ID
The ASIC includes a 32-bit mask programmable ID. A microprocessor using the SPI interface will be able to read this ID. This ID is to be placed in the analog electronics block so that changing the ID does not require a chip reroute. The design should be such that only one metal or one contact mask change is required to change the ID.
Spare Test Outputs
The ASIC has 16 spare digital output signals that can be multiplexed to the 8-bit GPIO under commands sent over the SPI interface. These signals will be organized as two 8-bit bytes and will be connected to VSS if not used.
Digital Testing
The ASIC has a test mode controller that uses two input pins, TEST_CTL0 (4291) and TEST_CTL1 (4292). The test controller generates signals from the combination of the test control signals that have the following functionality (TEST_CTL<1:0>):
The test controller logic is split between the VDD and VDDBU power planes. During scan mode, testing LT_VBAT should be asserted high to condition the analog outputs to the digital logic. The ASIC has a scan chain implemented in as much digital logic as reasonably possible for fast digital testing.
Leakage Test Pin
The ASIC has a pin called LT_VBAT that, when high, will put all the analog blocks into an inactive mode so that only leakage currents will be drawn from the supplies. LT_VBAT causes all digital outputs from analog blocks to be in a stable high or low state as to not affect interface logic current drain. The LT_VBAT pad is on the VBAT plane with a pulldown with a resistance between 10 k and 40 k ohms.
Power Requirements
In embodiments of the invention, the ASIC includes a low power mode where, at a minimum, the microprocessor clock is off, the 32 kHz real time clock runs, and circuitry is active to detect a sensor connection, a change of level of the WAKE_UP pin, or a BREAK on the nRX_EXT input. This mode has a total current drain from VBAT (VDDBU), VDD, and VDDA of 4.0 uA maximum. When the Battery Protection Circuit detects a low battery (see Battery Protection Circuit description), the ASIC goes to a mode with only the VBAT and VDDBU power planes active. This is called Low Battery state. The VBAT current in this mode is less than 0.3 uA.
With the ASIC programmed to the potentiostat configuration with any one WORK electrode active in the H2O2 (peroxide) mode with its voltage set to 1.535V, the COUNTER amplifier on with the VSET_RE set to 1.00V, a 20 MEG load resistor connected between WORK and the COUNTER, the COUNTER and RE connected together and assuming one WORK electrode current measurement per minute, the average current drain of all power supplies is less than 7 uA. The measured current after calibration should be 26.75 nA±3%. Enabling additional WORK electrodes increases the combined current drain by less than 2 uA with the WORK electrode current of 25 nA.
With the ASIC programmed to the potentiostat configuration with the diagnostic function enabled to measure the impedance of one of the WORK electrodes with respect to the COUNTER electrode, the ASIC is configured to meet the following:
In preferred embodiments of the invention, the ASIC:
In embodiments of the invention, the ASIC may be fabricated in 0.25-micron CMOS process, and backup data for the ASIC is on DVD disk, 916-TBD.
As described in detail hereinabove, the ASIC provides the necessary analog electronics to: (i) support multiple potentiostats and interface with multi-terminal glucose sensors based on either Oxygen or Peroxide; (ii) interface with a microcontroller so as to form a micropower sensor system; and (iii) implement EIS diagnostics based on measurement of EIS-based parameters. The measurement and calculation of EIS-based parameters will now be described in accordance with embodiments of the inventions herein.
As mentioned previously, the impedance at frequencies in the range from 0.1 Hz to 8 kHz can provide information as to the state of the sensor electrodes. The AFE IC circuitry incorporates circuitry to generate the measurement forcing signals and circuitry to make measurements used to calculate the impedances. The design considerations for this circuitry include current drain, accuracy, speed of measurement, the amount of processing required, and the amount of on time required by a control microprocessor.
In a preferred embodiment of the invention, the technique the AFE IC uses to measure the impedance of an electrode is to superimpose a sine wave voltage on the dc voltage driving an electrode and to measure the phase and amplitude of the resultant AC current. To generate the sine wave, the AFE IC incorporates a digitally-synthesized sine wave current. This digital technique is used because the frequency and phase can be precisely controlled by a crystal derived timebase and it can easily generate frequencies from DC up to 8 kHz. The sine wave current is impressed across a resistor in series with a voltage source in order to add the AC component to the electrode voltage. This voltage is the AC forcing voltage. It is then buffered by an amplifier that drives a selected sensor electrode.
The current driving the electrode contains the resultant AC current component from the forcing sine wave and is converted to a voltage. This voltage is then processed by multiplying it by a square wave that has a fixed phase relative to the synthesized sine wave. This multiplied voltage is then integrated. After the end of a programmable number of integration intervals—an interval being an integral number of 1 periods of the driving sine wave—the voltage is measured by the ADC. By calculations involving the values of the integrated voltages, the real and imaginary parts of the impedance can be obtained.
The advantage of using integrators for the impedance measurement is that the noise bandwidth of the measurement is reduced significantly with respect to merely sampling the waveforms. Also, the sampling time requirements are significantly reduced which relaxes the speed requirement of the ADC.
The plots in
Calculation of Impedance
The equations describing the integrator output are provided below. For simplicity, only 12 of a sine wave period is considered. As can be seen from the plots of
The formulas with the multiplying square wave in-phase (0°) with respect to the driving sine wave are shown below. This will yield a voltage that is proportional to the real component of the current. It is noted that Φ is the phase shift of the sine wave relative to the multiplying square wave; Vout is the integrator output, and Aampl is the current sine wave amplitude. Also, the period of the sine wave is 1/f, and RC is the time constant of the integrator.
If Φ=0,
This corresponds to the real part of the current.
For the multiplying square wave quadrature phase (90°) with respect to the driving sine wave to yield an output proportional to the imaginary component of the current:
If
This corresponds to the imaginary part of the current.
In the first example plot shown in
For the 90° square wave multiply, the result should be 0 since sin(0)=0. The simulation result is close to this value.
To calculate the phase:
where Vout90 is the integrator output with the 90° phase shift for the multiply, and Vout0 is the integrator output for the 0° phase shift. The Vout90 and Vout0 outputs must be integrated for the same number of 12 cycles or normalized by the number of cycles. It is important to note that, in the actual software (e.g., ASIC) implementation, only integral cycles (360°) are allowed because an integral number of cycles compensates for any offset in the circuitry before the multiplier.
The magnitude of the current can be found from
This current has the phase angle as calculated above.
The above analysis shows that one can determine the current amplitude and its phase with respect to the multiplying signal. The forcing voltage is generated in a fixed phase (0, 90, 180 or 270 degrees) with respect to the multiplying signal—this is done digitally so that it is precisely controlled. But there is at least one amplifier in the path before the forcing sine wave is applied to the electrode; this will introduce unwanted phase shift and amplitude error. This can be compensated for by integrating the forcing sine wave signal obtained electrically near the electrode. Thus, the amplitude and any phase shift of the forcing voltage can be determined. Since the path for both the current and voltage waveform will be processed by the same circuit, any analog circuit gain and phase errors will cancel.
Since the variable of interest is the impedance, it may not be necessary to actually calculate the Aampl. Because the current waveform and the voltage waveform are integrated through the same path, there exists a simple relationship between the ratio of the current and the voltage. Calling the integrated current sense voltage V1_out and the integrated electrode voltage as VV_out with the additional subscript to describe the phase of the multiplying function:
The impedance will be the voltage divided by the current. Thus,
The magnitudes of the voltage and the current can also be obtained from the square root of the squares of the 0 and 90 degree phase integration voltages. As such, the following may also be used:
The integration of the waveforms may be done with one hardware integrator for the relatively-higher frequencies, e.g., those above about 256 Hz. The high frequencies require four measurement cycles: (i) one for the in-phase sensor current; (ii) one for the 90 degree out of phase sensor current; (iii) one for the in-phase forcing voltage; and (iv) one for the 90 degree out of phase forcing voltage.
Two integrators may be used for the relatively-lower frequencies, e.g., those lower than about 256 Hz, with the integration value consisting of combining integrator results numerically in the system microprocessor. Knowing how many integrations there are per cycle allows the microprocessor to calculate the 0 and 90 degree components appropriately.
Synchronizing the integrations with the forcing AC waveform and breaking the integration into at least four parts at the lower frequencies will eliminate the need for the hardware multiplier as the combining of the integrated parts in the microprocessor can accomplish the multiplying function. Thus, only one integration pass is necessary for obtaining the real and imaginary current information. For the lower frequencies, the amplifier phase errors will become smaller, so below a frequency, e.g., between 1 Hz and 50 Hz, and preferably below about 1 Hz, the forcing voltage phase will not need to be determined. Also, the amplitude could be assumed to be constant for the lower frequencies, such that only one measurement cycle after stabilization may be necessary to determine the impedance.
As noted above, whereas one hardware integrator is used for the relatively-higher frequencies, for the relatively-lower frequencies, two integrators may be used. In this regard, the schematic in
For the relatively-lower frequencies, such as, e.g., those below about 500 Hz, the integrator output can saturate with common parameters. Therefore, for these frequencies, two integrators are used that are alternately switched. That is, while a first integrator is integrating, the second integrator is being read by the ADC and then is reset (zeroed) to make it ready to integrate when the integration time for first integrator is over. In this way, the signal can be integrated without having gaps in the integration. This would add a second integrator and associated timing controls to the EIS circuitry shown in
Stabilization Cycle Considerations
The above analysis is for steady state conditions in which the current waveform does not vary from cycle to cycle. This condition is not met immediately upon application of a sine wave to a resistor-capacitor (RC) network because of the initial state of the capacitor. The current phase starts out at 0 degrees and progresses to the steady state value. However, it would be desirable for the measurement to consume a minimum amount of time in order to reduce current drain and also to allow adequate time to make DC sensor measurements (Isigs). Thus, there is a need to determine the number of cycles necessary to obtain sufficiently accurate measurements.
The equation for a simple RC circuit—with a resistor and capacitor in series—is
Solving the above for I(t) gives:
where Vc0 is the initial value of the capacitor voltage, Vm is the magnitude of the driving sine wave, and ω is the radian frequency (2πf).
The first term contains the terms defining the non-steady state condition. One way to speed the settling of the system would be to have the first term equal 0, which may be done, e.g., by setting
While this may not be necessary in practice, it is possible to set the initial phase of the forcing sine wave to jump immediately from the DC steady state point to Vcinit. This technique may be evaluated for the specific frequency and anticipated phase angle to find the possible reduction in time.
The non-steady state term is multiplied by the exponential function of time. This will determine how quickly the steady state condition is reached. The RC value can be determined as a first order approximation from the impedance calculation information. Given the following:
it follows that
For a sensor at 100 Hz with a 5 degree phase angle, this would mean a time constant of 18.2 msec. For settling to less than 1%, this would mean approximately 85 msec settling time or 8.5 cycles. On the other hand, for a sensor at 0.10 Hz with a 65 degree phase angle, this would mean a time constant of 0.75 sec. For settling to less than 1%, this would mean approximately 3.4 sec settling time.
Thus, in embodiments of the invention as detailed hereinabove, the ASIC includes (at least) 7 electrode pads, 5 of which are assigned as WORK electrodes (i.e., sensing electrodes, or working electrodes, or WEs), one of which is labeled COUNTER (i.e., counter electrode, or CE), and one that is labeled REFERENCE (i.e., reference electrode, or RE). The counter amplifier 4321 (see
It is important to note that, with the ASIC as described herein, each of the above-mentioned five working electrodes, the counter electrode, and the reference electrode is individually and independently addressable. As such, any one of the 5 working electrodes may be turned on and measure Isig (electrode current), and any one may be turned off. Moreover, any one of the 5 working electrodes may be operably connected/coupled to the EIS circuitry for measurement of EIS-related parameters, e.g., impedance and phase. In other words, EIS may be selectively run on any one or more of the working electrodes. In addition, the respective voltage level of each of the 5 working electrodes may be independently programmed in amplitude and sign with respect to the reference electrode. This has many applications, such as, e.g., changing the voltage on one or more electrodes in order to make the electrode(s) less sensitive to interference.
In embodiments where two or more working electrodes are employed as redundant electrodes, the EIS techniques described herein may be used, e.g., to determine which of the multiplicity of redundant electrodes is functioning optimally (e.g., in terms of faster start-up, minimal or no dips, minimal or no sensitivity loss, etc.), so that only the optimal working electrode(s) can be addressed for obtaining glucose measurements. The latter, in turn, may drastically reduce, if not eliminate, the need for continual calibrations. At the same time, the other (redundant) working electrode(s) may be: (i) turned off, which would facilitate power management, as EIS may not be run for the “off” electrodes; (ii) powered down; and/or (iii) periodically monitored via EIS to determine whether they have recovered, such that they may be brought back on line. On the other hand, the non-optimal electrode(s) may trigger a request for calibration. The ASIC is also capable of making any of the electrodes—including, e.g., a failed or off-line working electrode—the counter electrode. Thus, in embodiments of the invention, the ASIC may have more than one counter electrode.
While the above generally addresses simple redundancy, wherein the redundant electrodes are of the same size, have the same chemistry, the same design, etc., the above-described diagnostic algorithms, fusion methodologies, and the associated ASIC may also be used in conjunction with spatially distributed, similarly sized or dissimilarly sized, working electrodes as a way of assessing sensor implant integrity as a function of implant time. Thus, in embodiments of the invention, sensors may be used that contain electrodes on the same flex that may have different shapes, sizes, and/or configurations, or contain the same or different chemistries, used to target specific environments.
For example, in one embodiment, one or two working electrodes may be designed to have, e.g., considerably better hydration, but may not last past 2 or 3 days. Other working electrode(s), on the other hand, may have long-lasting durability, but slow initial hydration. In such a case, an algorithm may be designed whereby the first group of working electrode(s) is used to generate glucose data during early wear, after which, during mid-wear, a switch-over may be made (e.g., via the ASIC) to the second group of electrode(s). In such a case, the fusion algorithm, e.g., may not necessarily “fuse” data for all of the WEs, and the user/patient is unaware that the sensing component was switched during mid-wear.
In yet other embodiments, the overall sensor design may include WEs of different sizes. Such smaller WEs generally output a lower Isig (smaller geometric area) and may be used specifically for hypoglycemia detection/accuracy, while larger WEs—which output a larger Isig—may be used specifically for euglycemia and hyperglycemia accuracy. Given the size differences, different EIS thresholds and/or frequencies must be used for diagnostics as among these electrodes. The ASIC, as described hereinabove, accommodates such requirements by enabling programmable, electrode-specific, EIS criteria. As with the previous example, signals may not necessarily be fused to generate an SG output (i.e., different WEs may be tapped at different times).
As was noted previously, the ASIC includes a programmable sequencer 4266 that commands the start and stop of the stimulus and coordinates the measurements of the EIS-based parameters for frequencies above about 100 Hz. At the end of the sequence, the data is in a buffer memory, and is available for a microprocessor to quickly obtain (values of) the needed parameters. This saves time, and also reduces system power requirements by requiring less microprocessor intervention.
For frequencies lower than about 100 Hz, the programmable sequencer 4266 coordinates the starting and stopping of the stimulus for EIS, and buffers data. Either upon the end of the measurement cycle, or if the buffer becomes close to full, the ASIC may interrupt the microprocessor to indicate that it needs to gather the available data. The depth of the buffer will determine how long the microprocessor can do other tasks, or sleep, as the EIS-based parameters are being gathered. For example, in one preferred embodiment, the buffer is 64 measurements deep. Again, this saves energy as the microprocessor will not need to gather the data piecemeal. It is also noted that the sequencer 4266 also has the capability of starting the stimulus at a phase different from 0, which has the potential of settling faster.
The ASIC, as described above, can control the power to a microprocessor. Thus, for example, it can turn off the power completely, and power up the microprocessor, based on detection of sensor connection/disconnection using, e.g., a mechanical switch, or capacitive or resistive sensing. Moreover, the ASIC can control the wakeup of a microprocessor. For example, the microprocessor can put itself into a low-power mode. The ASIC can then send a signal to the microprocessor if, e.g., a sensor connect/disconnect detection is made by the ASIC, which signal wakes up the processor. This includes responding to signals generated by the ASIC using techniques such as, e.g., a mechanical switch or a capacitive-based sensing scheme. This allows the microprocessor to sleep for long periods of time, thereby significantly reducing power drain.
It is important to reiterate that, with the ASIC as described hereinabove, both oxygen sensing and peroxide sensing can be performed simultaneously, because the five (or more) working electrodes are all independent, and independently addressable, and, as such, can be configured in any way desired. In addition, the ASIC allows multiple thresholds for multiple markers, such that EIS can be triggered by various factors—e.g., level of Vcntr, capacitance change, signal noise, large change in Isig, drift detection, etc.—each having its own threshold(s). In addition, for each such factor, the ASIC enables multiple levels of thresholds.
In yet another embodiment of the invention, EIS may be used as an alternative plating measurement tool, wherein the impedance of both the working and counter electrodes of the sensor substrate may be tested, post-electroplating, with respect to the reference electrode. More specifically, existing systems for performing measurements of the sensor substrate which provide an average roughness of the electrode surface sample a small area from each electrode to determine the average roughness (Ra) of that small area. For example, currently, the Zygo Non-contact Interferometer is used to quantify and evaluate electrode surface area. The Zygo interferometer measures a small area of the counter and working electrodes and provides an average roughness value. This measurement correlates the roughness of each sensor electrode to their actual electrochemical surface area. Due to the limitations of systems that are currently used, it is not possible, from a manufacturing throughput point of view, to measure the entire electrode surface, as this would be an extremely time-consuming endeavor.
In order to measure the entire electrode in a meaningful and quantitative manner, an EIS-based methodology for measuring surface area has been developed herein that is faster than current, e.g., Zygo-based, testing, and more meaningful from a sensor performance perspective. Specifically, the use of EIS in electrode surface characterization is advantageous in several respects. First, by allowing multiple plates to be tested simultaneously, EIS provides a faster method to test electrodes, thereby providing for higher efficiency and throughput, while being cost-effective and maintaining quality.
Second, EIS is a direct electrochemical measurement on the electrode under test, i.e., it allows measurement of EIS-based parameter(s) for the electrode and correlates the measured value to the true electrochemical surface area of the electrode. Thus, instead of taking an average height difference over a small section of the electrode, the EIS technique measures the double layer capacitance (which is directly related to surface area) over the whole electrode surface area and, as such, is more representative of the properties of the electrode, including the actual surface area. Third, EIS testing is non-destructive and, as such, does not affect future sensor performance. Fourth, EIS is particularly useful where the surface area to be measured is either fragile or difficult to easily manipulate.
For purposes of this embodiment of the invention, the EIS-based parameter of interest is the Imaginary impedance (Zim), which may be obtained, as discussed previously, based on measurements of the impedance magnitude (|Z|) in ohms and the phase angle (Φ) in degrees of the electrode immersed in an electrolyte. It has been found that, in addition to being a high-speed process, testing using the electrochemical impedance of both the Counter Electrode (CE) and the WE is an accurate method of measuring the surface area of each electrode. This is also important because, although the role of electrode size in glucose sensor performance is dictated, at least in part, by the oxidation of the hydrogen peroxide produced by the enzymatic reaction of glucose with GOX, experiments have shown that an increased WE surface area reduces the number of low start-up events and improves sensor responsiveness—both of which are among the potential failure modes that were previously discussed at some length.
Returning to the imaginary impedance as the EIS-based parameter of interest, it has been found that the key parameters that drive the electrode surface area, and consequently, its imaginary impedance values are: (i) Electroplating conditions (time in seconds and current in micro Amperes); (ii) EIS frequency that best correlates to surface area; (iii) the number of measurements conducted on a single electrode associated to the electrolyte used in the EIS system; and (iv) DC Voltage Bias.
In connection with the above parameters, experiments have shown that using Platinum plating solution as the electrolyte presents a poor correlation between the imaginary impedance and surface area across the entire spectrum. However, using Sulfuric Acid (H2SO4) as the electrolyte presents very good correlation data, and using Phosphate Buffered saline Solution with zero mg/ml of Glucose (PBS-0) presents even better correlation data, between imaginary impedance and Surface Area Ratio (SAR), especially between the relatively-lower frequencies of 100 Hz and 5 Hz. Moreover, fitted regression analysis using a cubic regression model indicates that, in embodiments of the invention, the best correlation may occur at a frequency of 10 Hz. In addition, it has been found that reducing the Bias voltage from 535 mV to zero dramatically reduces the day-to-day variability in the imaginary impedance measurement.
Using the above parameters, the limits of acceptability of values of imaginary impedance can be defined for a given sensor design. Thus, for example, for the Comfort Sensor manufactured by Medtronic Minimed, the imaginary impedance measured between the WE and the RE (Platinum mesh) must be greater than, or equal to, −100 Ohms. In other words, sensors with an imaginary impedance value (for the WE) of less than −100 Ohms will be rejected. For the WE, an impedance value of greater than, or equal to, −100 Ohms corresponds to a surface area that is equal to, or greater than, that specified by an equivalent Ra measurement of greater than 0.55 um.
Similarly, the imaginary impedance measured between the CE and the RE (Platinum mesh) must be greater than, or equal to, −60 Ohms, such that sensors with an imaginary impedance value (for the CE) of less than −60 Ohms will be rejected. For the CE, an impedance value of greater than, or equal to, −60 Ohms corresponds to a surface area that is equal to, or greater than, that specified by an equivalent Ra measurement greater than 0.50 um.
In accordance with embodiments of the invention, an equivalent circuit model as shown in
The reaction-related elements include Rp, which is the polarization resistance (i.e., resistance to voltage bias and charge transfer between the electrode and electrolyte), and Cdl, which is the double layer capacitance at the electrode-electrolyte interface. It is noted that, while, in this model, the double layer capacitance is shown as a constant phase element (CPE) due to inhomogeneity of the interface, it can also be modeled as a pure capacitance. As a CPE, the double layer capacitance has two parameters: Cdl, which denotes the admittance, and a, which denotes the constant phase of the CPE (i.e., how leaky the capacitor is). The frequency-dependent impedance of the CPE may be calculated as
Thus, the model includes two (2) reaction-related elements—Rp and Cdl—which are represented by a total of three (3) parameters: Rp, Cdl, and α.
The membrane-related elements include Rmem, which is the membrane resistance (or resistance due to the chemistry layer), and Cmem, which is the membrane capacitance (or capacitance due to the chemistry layer). Although Cmem is shown in
Thus, the model includes three (3) membrane-related elements—Rmem, Cmem, and W—which are represented by a total of four (4) parameters: Rmem, Cmem, Y0, and λ.
The top portion of
In the ensuing discussion, the equivalent circuit model of
Each of the above-described circuit elements and parameters affects the EIS output in various ways.
The effect of change in the Warburg admittance is shown in
In contrast to the above-described elements and parameters, the membrane-related elements and parameters generally affect the higher-frequency region of the Nyquist plot.
The above discussion in connection with the equivalent circuit model of
In
Putting the above-described EIS output and signature information together, it has been discovered that, during sensor start-up, the magnitude of Rmem+Rsol decreases over time, corresponding to a shift from right to left in the Nyquist plot. During this period, Cdl decreases, and Rp increases, with a corresponding increase in Nyquist slope. Finally, Warburg admittance also increases. As noted previously, the foregoing is consistent with the hydration process, with EIS plots and parameter values taking on the order of 1-2 days (e.g., 24-36 hours) to stabilize.
Embodiments of the invention are directed to real-time self-calibration, and more particularly, to in-vivo self-calibration of glucose sensors based on EIS data. Any calibration algorithm, including self-calibration algorithms, must address sensitivity loss. As discussed previously, two types of sensitivity loss may occur: (1) Isig dip, which is a temporary loss of sensitivity, typically occurring during the first few days of sensor operation; and (2) permanent sensitivity loss, occurring generally at the end of sensor life, and sometimes correlated with the presence of a Vcntr rail.
It has been discovered that sensitivity loss can manifest itself as an increase in Rsol or Rmem (or both), which can be observed in the Nyquist plot as a parallel shift to the right, or, if Rmem changes, a more visible start to a semicircle at the higher frequencies (resulting in an increase in high-frequency imaginary impedance). In addition to, or instead of, Rsol and Rmem, there could be an increase in Cmem only. This can be observed as changes in the high-frequency semicircle. Sensitivity loss will be accompanied by a change in Cdl (by way of a longer tail in the lower-frequency segment of the Nyquist plot). The foregoing signatures provide a means for determining how different changes in EIS output can be used to compensate for changes in sensitivity.
For a normally operating glucose sensor, there is a linear relationship between blood glucose (BG) and the sensor's current output (Isig). Thus,
BG=CF×(Isig+c)
where “CF” is the Cal Factor, and “c” is the offset. This is shown in
The length of the lower-frequency segment of the Nyquist plot (Lnyquist)—which, for simplicity, may be illustratively estimated as the length between 128 Hz and 0.105 Hz (real) impedance—is highly correlated with glucose changes. It has been discovered, through model fitting, that the only parameter that changes during glucose changes is the double layer capacitance Cdl, and specifically the double layer admittance. Therefore, the only Isig-dependent—and, by extension, glucose-dependent—parameter in the equivalent circuit model of
In view of the above, in one embodiment of the invention, changes in Rmem and Cmem may be tracked to arrive at a readjustment of the Cal Factor (BG/Isig) and, thereby, enable real-time self-calibration of sensors without the need for continual finger-stick testing. This is possible, in part, because changes in Rmem and Cmem result in a change in the offset (c), but not in the slope, of the calibration curve. In other words, such changes in the membrane-related parameters of the model generally indicate that the sensor is still capable of functioning properly.
Graphically,
With reference to
Changes in Cdl and Rp, on the other hand, generally indicate that the electrode(s) may already be compromised, such that recovery may no longer be possible. Still, changes in Cdl and Rp may also be tracked, e.g., as a diagnostic tool, to determine, based on the direction/trend of the change in these parameters, whether, the drift or sensitivity loss has in fact reached a point where proper sensor operation is no longer recoverable or achievable. In this regard, in embodiments of the invention, respective lower and/or upper thresholds, or ranges of thresholds, may be calculated for each of Cdl and Rp, or for the change in slope, such that EIS output values for these parameters that fall outside of the respective threshold (range) may trigger, e.g., termination and/or replacement of the sensor due to unrecoverable sensitivity loss. In specific embodiments, sensor-design and/or patient-specific ranges or thresholds may be calculated, wherein the ranges/thresholds may be, e.g., relative to the change in Cdl, Rp, and/or slope.
Graphically,
The combined effect of the increase in membrane resistance, the decrease in Cdl, and Vcntr rail is shown in
Thus, it has been discovered that, as an EIS signature, a temporary dip may be caused by increased membrane resistance (Rmem) and/or local Rsol increase. An increase in Rmem, in turn, is reflected by increased higher-frequency imaginary impedance. This increase may be characterized by the slope at high frequencies, (Snyquist)—which, for simplicity, may be illustratively estimated as the slope between 8 kHz and 128 Hz. In addition, Vcntr railing increases Cdl and decrease Rp, such that the length and slope decrease; this may be followed by gradual Cdl decrease and Rp increase associated with sensitivity loss. In general, a decrease in Cdl, combined with an increase in Rp (length increase) and in Rmem may be sufficient to cause sensitivity loss.
In accordance with embodiments of the invention, an algorithm for sensor self-calibration based on the detection of sensitivity change and/or loss is shown in
As shown in block 6375, as the length of the Nyquist plot is monitored, a significant increase in that length would indicate reduced sensitivity. In specific embodiments, sensor-design and/or patient-specific ranges or thresholds may be calculated, wherein the ranges/thresholds may be, e.g., relative to the change in the length of the Nyquist plot. Similarly, a more negative higher-frequency slope Snyquist corresponds to an increased appearance of the high-frequency semicircle and would be indicative of a possible dip 6365. Any such changes in Lnyquist and Snyquist are monitored, e.g., either continuously or periodically and, based on the duration and trend of the reduction in sensitivity, a determination is made as to whether total (i.e., severe) sensitivity loss has occurred, such that specific sensor glucose (SG) value(s) should be discarded (6385). In block 6395, the Cal Factor may be adjusted based on the monitored parameters, so as to provide a “calibration-free” CGM sensor. It is noted that, within the context of the invention, the term “calibration-free” does not mean that a particular sensor needs no calibration at all. Rather, it means that the sensor can self-calibrate based on the EIS output data, in real time, and without the need for additional finger-stick or meter data. In this sense, the self-calibration may also be referred to as “intelligent” calibration, as the calibration is not performed based on a predetermined temporal schedule, but on an as-needed basis, in real-time.
In embodiments of the invention, algorithms for adjustment of the Cal Factor (CF) and/or offset may be based on the membrane resistance which, in turn, may be estimated by the sum of Rmem and Rsol. As membrane resistance is representative of a physical property of the sensor, it generally cannot be estimated from EIS data run for a single frequency. Put another way, it has been observed that no single frequency will consistently represent membrane resistance, since frequencies shift depending on sensor state. Thus,
There is therefore a need to track membrane resistance in a physically meaningful way. Ideally, this may be done through model fitting, where Rmem and Rsol are derived from model fitting, and Rm is calculated as Rm=Rmem+Rsol. However, in practice, this approach is not only computationally expensive, as it may take an unpredictably long amount of time, but also susceptible to not converging at all in some situations. Heuristic metrics may therefore be developed to approximate, or estimate, the value of Rm=Rmem+Rsol. In one such metric, Rmem+Rsol is approximated by the value of the real-impedance intercept at a fairly stable imaginary impedance value. Thus, as shown in
Having estimated the value of Rm as discussed above, the relationship between Rm and the Cal Factor (CF) and/or Isig may then be explored. Specifically,
Thus, in one embodiment, an algorithm for adjustment of the Cal Factor would entail monitoring the change in membrane resistance based on a reference Cal Factor, and then modifying the Cal Factor proportionally based on the correlation between Rm and CF. In other words:
In another embodiment, a Cal Factor adjustment algorithm may entail modification of Isig based on proportional changes in 1/Rm, and independently of CF calculations. Thus, for purposes of such an algorithm, the adjusted Isig is derived as
Experiments have shown that the most dramatic CF changes occur in first 8 hours of sensor life. Specifically, in one set of in-vitro experiments, Isig was plotted as a function of time, while keeping various glucose levels constant over the life of the sensor. EIS was run every 3 minutes for the first 2 hours, while all model parameters were estimated and tracked over time. As noted previously, given a limited spectrum EIS, Rmem and Rsol cannot be (independently) estimated robustly. However, Rm=Rmem+Rsol can be estimated.
It has been discovered, however, that Rm=Rmem+Rsol is the only parameter that can account for changes in Isig over a similar startup time frame. Specifically,
As noted above in connection with
CF(t)=CFreference−m(Rreference−Rm(t))
where m is the gradient of the correlation in
In another embodiment, the Cal Factor adjustment algorithm may be modified by using a limited range of Rm over which adjustment occurs. This can help with small differences once Rm is smaller than ˜7000Ω, as may happen due to noise. The limited Rm range can also help when Rm is very large, as may happen due to very slow sensor hydration/stabilization. In yet another embodiment, the range of allowable CF may be limited, such as, e.g., by setting a lower limit of 4.5 for CF.
Given the complexities of estimating the value of EIS-related parameters, some of the current methods, including FDC, may be computationally less complex than the EIS Cal Factor adjustment algorithms described herein. However, the two approaches may also be implemented in a complementary fashion. Specifically, there may be situations in which FDC may be augmented by the instant Cal Factor adjustment algorithms. For example, the latter may be used to define the rate of change of the FDC, or to identify the range for which FDC should be applied (i.e., other than using CF alone), or to reverse the direction of FDC in special cases.
In yet other embodiments, the offset, rather than the Cal Factor, may be adjusted. In addition, or instead, limits may be imposed on applicable ranges of Rm and CF. In a specific embodiment, absolute, rather than relative, values may be used. Moreover, the relationship between Cal Factor and membrane may be expressed as multiplicative, rather than additive. Thus,
In an embodiment using EIS-based dynamic offset, the total current that is measured may be defined as the sum of the Faradaic current and the non-Faradaic current, wherein the former is glucose-dependent, while the latter is glucose-independent. Thus, mathematically,
itotal=iFaradaic+inon-Faradaic
Ideally, the non-Faradaic current should be zero, with a fixed working potential, such that
where A is the surface area, and
is the gradient of Peroxide.
However, when the double layer capacitance in changing, the non-Faradaic current cannot be ignored. Specifically, the non-Faradaic current may be calculated as
where q is the charge, V is the voltage, C is (double layer) capacitance. As can be seen from the above, when both voltage (V) and capacitance (C) are constant, both time-derivative values on the right-hand side of the equation are equal to zero, such that inon-Faradaic=0. In such an ideal situation, the focus can then turn to diffusion and reaction.
When V and C are both functions of time (e.g., at sensor initialization),
On the other hand, when V is constant, and C is a function of time,
Such conditions are present, for example, on day 1 of sensor operation.
It is noted that the Cdl decay is not exponential. As such, the decay cannot be simulated with an exponential function. Rather, it has been found that a 6th-order polynomial fit (6820) provides a reasonable simulation. Thus, for the purposes of the above-mentioned scenario, where V is constant, and C is a function of time, inon-Faradaic may be calculated if the polynomial coefficients are known. Specifically,
C=P(1)t6+P(2)t5+P(3)t4+P(4)t3+P(5)t2+P(6)t1+P(7)
where P is the polynomial coefficient array, and t is time. The non-Faradaic current can then be calculated as:
Finally, since itotal=iFaradaic+inon-Faradaic, the non-Faradaic component of the current can be removed by rearranging, such that
iFaradaic=itotal−inon-Faradaic
It has been found that the above approach can be used to reduce the MARD, as well as adjust the Cal Factor right at the beginning of sensor life. With regard to the latter,
In addition, the reduction in MARD can be seen in the example shown in
where P is the polynomial coefficient (array) used to fit the double layer capacitance curve.
In real-time, separation of the Faradaic and non-Faradaic currents may be used to automatically determine the time to conduct the first calibration.
Other methods may also be used to calculate the derivative
such as, e.g., second-order accurate finite value method (FVM), Savitzky-Golay, etc.
Next, the percentage of the total current, i.e., Isig, that is comprised of the non-Faradaic current may be calculated simply as the ratio inon-Faradaic/Isig. Once this ratio reaches a lower threshold, a determination can then be made, in real-time, as to whether the sensor is ready for calibration. Thus, in an embodiment of the invention, the threshold may be between 5% and 10%.
In another embodiment, the above-described algorithm may be used to calculate an offset value in real-time, i.e., an EIS-based dynamic offset algorithm. Recalling that
and that sensor current Isig is the total current, including the Faradaic and non-Faradaic components
itotal=iFaradaic+inon-Faradaic
the Faradaic component is calculated as
iFaradaic=itotal−inon-Faradaic
Thus, in an embodiment of the invention, the non-Faradaic current, inon-Faradaic, can be treated as an additional offset to Isig. In practice, when double layer capacitance decreases, e.g., during the first day of sensor life, inon-Faradaic is negative and decreases as a function of time. Therefore, in accordance with this embodiment of the invention, a larger offset—i.e., the usual offset as calculated with current methods, plus inon-Faradaic—would be added to the Isig at the very beginning of sensor life and allowed to decay following the 5th-order polynomial curve. That is, the additional offset inon-Faradaic follows a 5th-order polynomial, the coefficient for which must be determined. Depending on how dramatic the change in double layer capacitance is, the algorithm in accordance with this embodiment of the invention may apply to the first few hours, e.g., the first 6-12 hours, of sensor life.
The polynomial fit may be calculated in various ways. For example, in an embodiment of the invention, coefficient P may be pre-determined based upon existing data. Then, the dynamic offset discussed above is applied, but only when the first Cal Factor is above normal range, e.g., ˜7. Experiments have shown that, generally, this method works best when the real-time double layer capacitance measurement is less reliable than desired.
In an alternative embodiment, an in-line fitting algorithm is used. Specifically, an in-line double layer capacitance buffer is created at time T. P is then calculated based on the buffer, using a polynomial fit at time T. Lastly, the non-Faradaic current (dynamic offset) at time T+ΔT is calculated using P at time T. It is noted that this algorithm requires double layer capacitance measurements to be more frequent than their current level (every 30 mins), and that the measurements be reliable (i.e., no artifacts). For example, EIS measurements could be taken once every 5 minutes, or once every 10 minutes, for the first 2-3 hours of sensor life.
In developing a real-time, self-calibrating sensor, the ultimate goal is to minimize, or eliminate altogether, the reliance on a BG meter. This, however, requires understanding of the relationships between EIS-related parameters and Isig, Cal Factor (CF), and offset, among others. For example, in-vivo experiments have shown that there is a correlation between Isig and each of Cdl and Warburg Admittance, such that each of the latter may be Isig-dependent (at least to some degree). In addition, it has been found that, in terms of factory calibration of sensors, Isig and Rm (=Rmem+Rsol) are the most important parameters (i.e., contributing factors) for the Cal Factor, while Warburg Admittance, Cdl, and Vcntr are the most important parameters for the offset.
In in-vitro studies, metrics extracted from EIS (e.g., Rmem) tend to exhibit a strong correlation with Cal Factor. However, in-vivo, the same correlation can be weak. This is due, in part, to the fact that patient-specific, or (sensor) insertion-site-specific, properties mask the aspects of the sensor that would allow use of EIS for self-calibration or factory calibration. In this regard, in an embodiment of the invention, redundant sensors may be used to provide a reference point that can be utilized to estimate the patient-specific response. This, in turn, would allow a more robust factory calibration, as well as help identify the source of sensor failure mode(s) as either internal, or external, to the sensor.
In general, EIS is a function of electric fields that form between the sensor electrodes. The electric field can extend beyond the sensor membrane and can probe into the properties of the (patient's) body at the sensor insertion site. Therefore, if the environment in which the sensor is inserted/disposed is uniform across all tests, i.e., if the tissue composition is always the same in-vivo (or if the buffer is always the same in-vitro), then EIS can be correlated to sensor-only properties. In other words, it may be assumed that changes in the sensor lead directly to changes in the EIS, which can be correlated with, e.g., the Cal Factor.
However, it is well known that the in-vivo environment is highly variable, as patient-specific tissue properties depend on the composition of the insertion site. For example, the conductivity of the tissue around the sensor depends on the amount of fat around it. It is known that the conductivity of fat is much lower than that of pure interstitial fluid (ISF), and the ratio of local fat to ISF can vary significantly. The composition of the insertion site depends on the site of insertion, depth of insertion, patient-specific body composition, etc. Thus, even though the sensor is the same, the Rmem that is observed from EIS studies varies much more significantly because the reference environment is rarely, if ever, the same. That is, the conductivity of the insertion site affects the Rmem of the sensor/system. As such, it may not be possible to use the Rmem uniformly and consistently as a reliable calibration tool.
As described previously, EIS can also be used as a diagnostic tool. Thus, in embodiments of the invention, EIS may be used for gross failure analysis. For example, EIS can be used to detect severe sensitivity loss which, in turn, is useful for determining whether, and when, to block sensor data, deciding on optimal calibration times, and determining whether, and when, to terminate a sensor. In this regard, it bears repeating that, in continuous glucose monitoring and analysis, two major types of severe sensitivity loss are typically considered: (1) Temporary sensitivity loss (i.e., an Isig dip), which typically occurs early in sensor life, and is generally believed to be a consequence of external sensor blockage; and (2) Permanent sensitivity loss, which typically occurs at the end of sensor life, and never recovers, thus necessitating sensor termination.
Both in-vivo and in-vitro data show that, during sensitivity loss and Isig dips, the EIS parameters that change may be any one or more of Rmem, Rsol, and Cmem. The latter changes, in turn, manifest themselves as a parallel shift in the higher-frequency region of the Nyquist plot, and/or an increased appearance of the high-frequency semicircle. In general, the more severe the sensitivity loss, the more pronounced these symptoms are.
With specific regard to the detection of Isig dips, as opposed to permanent sensitivity loss, some current methodologies use the Isig only to detect Isig dips by, e.g., monitoring the rate at which Isig may be dropping, or the degree/lack of incremental change in Isig over time, thereby indicating that perhaps the sensor is not responsive to glucose. This, however, may not be very reliable, as there are instances when Isig remains in the normal BG range, even when there is an actual dip. In such a situation, sensitivity loss (i.e., the Isig dip) is not distinguishable from hypoglycemia. Thus, in embodiments of the invention, EIS may be used to complement the information that is derived from the Isig, thereby increasing the specificity and sensitivity of the detection method.
Permanent sensitivity loss may generally be associated with Vcntr rails. Here, some current sensor-termination methodologies rely solely on the Vcntr rail data, such that, e.g., when Vcntr rails for one day, the sensor may be terminated. However, in accordance with embodiments of the invention, one method of determining when to terminate a sensor due to sensitivity loss entails using EIS data to confirm whether, and when, sensitivity loss happens after Vcntr rails. Specifically, the parallel shift in the higher-frequency region of the Nyquist plot may be used to determine whether permanent sensitivity loss has actually occurred once a Vcntr rail is observed. In this regard, there are situations in which Vcntr may rail at, e.g., 5 days into sensor life, but the EIS data shows little to shift at all in the Nyquist plot. In this case, normally, the sensor would have been terminated at 5-6 days. However, with EIS data indicating that there was, in fact, no permanent sensitivity loss, the sensor would not be terminated, thereby saving (i.e., using) the remainder of the sensor's useful life.
As mentioned previously, detection of sensitivity loss may be based on change(s) in one or more EIS parameters. Thus, changes in membrane resistance (Rm=Rmem+Rsol), for example, may manifest themselves in the mid-frequency (˜1 kHz) real impedance region. For membrane capacitance (Cmem), changes may be manifested in the higher-frequency (˜8 kHz) imaginary impedance because of increased semicircle. The double layer capacitance (Cdl) is proportional to average Isig. As such, it may be approximated as the length of lower-frequency Nyquist slope Lnyquist. Because Vcntr is correlated to oxygen levels, normal sensor behavior typically entails a decrease in Vcntr with decreasing Isig. Therefore, an increase in Vcntr (i.e., more negative), in combination with a decrease in Isig may also be indicative of sensitivity loss. In addition, average Isig levels, rates of change, or variability of signal that are low or physiologically unlikely may be monitored.
The EIS parameters must, nevertheless, be first determined. As described previously in connection with Cal Factor adjustments and related disclosure, the most robust way of estimating the EIS parameters is to perform model fitting, where the parameters in model equations are varied until the error between the measured EIS and the model output are minimized. Many methods of performing this estimate exist. However, for a real time application, model fitting may not be optimal because of computational load, variability in estimation time, and situations where convergence is poor. Usually, the feasibility will depend on the hardware.
When the complete model fitting noted above is not possible, in one embodiment of the invention, one method for real-time application is through use of heuristic methodologies. The aim is to approximate the true parameter values (or a corresponding metric that is proportional to trends shown by each parameter) with simple heuristic methods applied to the measured EIS. In this regard, the following are implementations for estimating changes in each parameter.
Double Layer Capacitance (Cdl)
Generally speaking, a rough estimate of Cdl can be obtained from any statistic that measures the length of the lower-frequency Nyquist slope (e.g., frequencies lower than ˜128 Hz). This can be done, for example, by measuring Lnyquist (the Cartesian distance between EIS at 128 Hz and 0.1 Hz in the Nyquist plot). Other frequency ranges may also be used. In another embodiment, Cdl may be estimated by using the amplitude of the lower-frequency impedance (e.g., at 0.1 Hz).
Membrane Resistance (Rmem) and Solution Resistance (Rsol)
As has been discussed hereinabove, on the Nyquist plot, Rmem+Rsol corresponds to the inflection point between the lower-frequency and the higher-frequency semicircles. Thus, in one embodiment, Rmem+Rsol may be estimated by localizing the inflection point by detecting changes in directionality of the Nyquist slope (e.g., by using derivatives and/or differences). Alternatively, a relative change in Rmem+Rsol can be estimated by measuring the shift in the Nyquist slope. To do this, a reference point in the imaginary axis can be chosen (see
Membrane capacitance (Cmem)
Increases in Cmem manifest as a more pronounced (or the more obvious appearance of) a higher-frequency semicircle. Changes in Cmem can therefore be detected by estimating the presence of this semicircle. Thus, in one embodiment, Cmem may be estimated by tracking the higher-frequency imaginary component of impedance. In this regard, a more negative value corresponds to the increased presence of a semicircle.
Alternatively, Cmem may be estimated by tracking the highest point in the semicircle within a frequency range (e.g., 1 kHz-8 kHz). This frequency range can also be determined by identifying the frequency at which the inflection point occurs and obtaining the largest imaginary impedance for all frequencies higher than the identified frequency. In this regard, a more negative value corresponds to an increased presence of the semicircle.
In a third embodiment, Cmem may be estimated by measuring the Cartesian distance between two higher-frequency points in the Nyquist plot, such as, e.g., 8 kHz and 1 kHz. This is the high frequency slope (Snyquist) defined previously in the instant application. Here, a larger absolute value corresponds to an increased semicircle, and a negative slope (with negative imaginary impedance on the y axis, and positive real impedance on the x) corresponds to the absence of a semicircle. It is noted that, in the above-described methodologies, there may be instances in which some of the detected changes in the semicircle may also be attributed to changes in Rmem. However, because changes in either are indicative of sensitivity loss, the overlap is considered to be acceptable.
Non-EIS Related Metrics
For context, it is noted that, prior to the availability of EIS metrics, sensitivity loss was by and large detected according to several non-EIS criteria. By themselves, these metrics are not typically reliable enough to achieve perfect sensitivity and specificity in the detection. They can, however, be combined with EIS-related metrics to provide supporting evidence for the existence of sensitivity loss. Some of these metrics include: (1) the amount of time that Isig is below a certain threshold (in nA), i.e., periods of “low Isig”; (2) the first order or second order derivatives of Isig leading to a state of “low Isig”, used as an indication of whether the changes in Isig are physiologically possible or induced by sensitivity loss; and (3) the variability/variance of Isig over a “low Isig” period, which can be indicative of whether the sensor is responsive to glucose or is flat lining.
Sensitivity-Loss Detection Algorithms
Embodiments of the invention are directed to algorithms for detection of sensitivity loss. The algorithms generally have access to a vector of parameters estimated from EIS measurements (e.g., as described hereinabove) and from non-EIS related metrics. Thus, e.g., the vector may contain Rmem and or shift in horizontal axis (of the Nyquist plot), changes in Cmem, and changes in Cdl. Similarly, the vector may contain data on the period of time Isig is in a “low” state, variability in Isig, rates of change in Isig. This vector of parameters can be tracked over time, wherein the aim of the algorithm is to gather robust evidence of sensitivity loss. In this context, “robust evidence” can be defined by, e.g., a voting system, a combined weighted metric, clustering, and/or machine learning.
Specifically, a voting system may entail monitoring of one or more of the EIS parameters. For example, in one embodiment, this involves determining when more than a predetermined, or calculated, number of the elements in the parameter vector cross an absolute threshold. In alternative embodiments, the threshold may be a relative (%) threshold. Similarly, the vector elements may be monitored to determine when a particular combination of parameters in the vector crosses an absolute or a relative threshold. In another embodiment, when any of a subset of elements in the vector crosses an absolute or a relative threshold, a check on the remainder of the parameters may be triggered to determine if enough evidence of sensitivity loss can be obtained. This is useful when at least one of a subset of parameters is a necessary (but perhaps insufficient) condition for sensitivity loss to be reliably detected.
A combined weighted metric entails weighing the elements in the vector according to, for example, how much they cross a predetermined threshold by. Sensitivity loss can then be detected (i.e., determined as occurring) when the aggregate weighted metric crosses an absolute or a relative threshold.
Machine learning can be used as more sophisticated “black box” classifiers. For example, the parameter vector extracted from realistic in-vivo experimentation can be used to train artificial neural networks (ANN), support vector machines (SVM), or genetic algorithms to detect sensitivity loss. A trained network can then be applied in real time in a very time-efficient manner.
Additional embodiments of the invention are also directed to using EIS in intelligent diagnostic algorithms. Thus, in one embodiment, EIS data may be used to determine whether the sensor is new, or whether it is being re-used (in addition to methodologies presented previously in connection with re-use of sensors by patients). With regard to the latter, it is important to know whether a sensor is new or is being re-used, as this information helps in the determination of what type of initialization sequence, if any, should be used. In addition, the information allows prevention of off-label use of a sensor, as well as prevention of sensor damage due to multiple reinitializations (i.e., each time a sensor is disconnected and then re-connected, it “thinks” that it is a new sensor, and therefore tries to reinitialize upon re-connection). The information also helps in post-processing of collected sensor data.
In connection with sensor re-use and/or re-connection, it has been discovered that the lower-frequency Nyquist slope for a new sensor before initialization is different from (i.e., lower than) the lower-frequency Nyquist slope for a sensor that has been disconnected, and then reconnected again. Specifically, in-vitro experiments have shown that the Nyquist slope is higher for a re-used sensor as opposed to a newly-inserted one. The Nyquist slope, therefore, can be used as a marker to differentiate between new and used (or re-used) sensors. In one embodiment, a threshold may be used to determine, based on the Nyquist slope, whether a specific sensor is being re-used. In embodiments of the invention, the threshold may be a Nyquist slope=3.
Equivalently, lower-frequency phase measurements may be used to detect sensors that have been previously initialized. Here, the pre-initialization phase angle at 0.105 Hz, e.g., may be used to differentiate between new and used (or re-used) sensors. Specifically, a threshold may be set at a phase angle of about −70°. Thus, if the pre-initialization phase angle at 0.105 Hz is less than the threshold, then the sensor is considered to be an old (i.e., previously-initialized) sensor. As such, no further initialization pulses will be applied to the sensor.
In another embodiment, EIS data may be used to determine the type of sensor being used. Here, it has been discovered that, if the sensor designs are significantly different, the respective EIS outputs should also be significantly different, on average. Different sensor configurations have different model parameters. It is therefore possible to use identification of these parameters at any point during the sensor life to determine the sensor type currently inserted. The parameters can be estimated, e.g., based on methods described hereinabove in connection with gross failure/sensitivity-loss analysis. Identification can be based on common methods to separate values, for example, setting thresholds on specific (single or multiple) parameters, machine learning (ANN, SVM), or a combination of both methods.
This information may be used, e.g., to change algorithm parameters and initialization sequences. Thus, at the beginning of the sensor life, this can be used to have a single processing unit (GST, GSR) to set optimal parameters for the calibration algorithm. Offline (non real-time), the identification of sensor type can be used to aid analysis/evaluation of on-the-field sensor performance.
It has also been discovered that the length of the lower-frequency Nyquist slope may be used to differentiate between different sensor types.
Embodiments of the invention are also directed to using diagnostic EIS measurements as a guide in determining the type of initialization that should be performed. As noted previously, initialization sequences can be varied based on detected sensor type (EIS-based or other), and/or detection of whether a new or old sensor is inserted (EIS-based). In addition, however, EIS-based diagnostics may also be used in determining a minimal hydration state prior to initialization (e.g., by tracking Warburg impedance), or in determining when to terminate initialization (e.g., by tracking reaction-dependent parameter, such as, e.g., Rp, Cdl, Alpha, etc.), so as to properly minimize sensor initialization time.
More specifically, to minimize initialization response time, additional diagnostics are required to control the processes that occur during initialization. In this regard, EIS may provide for the required additional diagnostics. Thus, for example, EIS may be measured between each initialization pulse to determine if further pulsing is required. Alternatively, or in addition, EIS may be measured during high pulses, and compared to the EIS of optimal initialization state to determine when the sensor is sufficiently initialized. Lastly, as noted above, EIS may be used in estimating a particular model parameter—most likely one or more reaction-dependent parameters, such as Rp, Cdl, Alpha, etc.
As has been noted, sensor calibration in general, and real-time sensor calibration in particular, is central to a robust continuous glucose monitoring (CGM) system. In this regard, calibration algorithms are generally designed such that, once a BG is received by taking a fingerstick, the new BG value is used to either generate an error message, or update the calibration factor which, in turn, is used to calculate sensor glucose. In some previous algorithms, however, a delay of 10-20 minutes may exist between the time when a fingerstick is entered, and the time when the user is notified of either the fingerstick being accepted or a new fingerstick being required for calibration. This is burdensome, as the user is left not knowing whether he/she will need his/her BG meter again in a few minutes.
In addition, in some situations, the presence of older BG values in the calibration buffer causes either perceived system delay, due to the newest BG value carrying less than 100% weight, or inaccuracy in the calculated SG (due to the older BG values no longer being representative of the current state of the system). Moreover, erroneous BG values are sometimes entered, but not caught by the system, which may lead to large inaccuracies until the next calibration.
In view of the above, embodiments of the invention seek to address potential shortcomings in prior methodologies, especially with regard to sensor performance for use with closed-loop systems. For example, in order to make the system more predictable, calibration errors may be notified only when the fingerstick (BG value) is received by the transmitter (i.e., entered), rather than, e.g., 10-15 minutes later. Additionally, in contrast to some existing systems, where a constant calibration error (CE) threshold is used, embodiments of the invention may utilize variable calibration error thresholds when higher errors are expected (e.g., either due to lower reliability of the sensor, or high rates of change), thereby preventing unnecessary calibration error alarms and fingerstick requests. Thus, in one aspect, when the sensor is in FDC mode, Isig dip calibration mode, or undergoing a high rate of change (e.g., when 2-packet rate of change ×CF>1.5 mg/dL/min.), a limit corresponding to 50% or 50 mg/dL may be used.
On the other hand, when low error is expected, the system may use a tighter calibration error limit, such as, e.g., 40% or 40 mg/dL. This reduces the likelihood that erroneous BG values may be used for calibration, while also allowing the status of the calibration attempt to be issued immediately (i.e., accepted for calibration, or a calibration error). Moreover, in order to handle situations where newer Isig values would cause a calibration error, a check at calibration time (e.g., 5-10 minutes after fingerstick) may select the most appropriate filtered Isig (fIsig) value to use for calibration.
In connection with the aforementioned issues involving BG values and the BG buffer, embodiments of the invention aim to reduce the delay, and the perceptions of delay, by assigning higher weighting to the newer BG value than was assigned in previous algorithms, and by ensuring that the early calibration update occurs more frequently. In addition, in situations where there is a confirmed sensitivity change (as confirmed, e.g., by the Smart Calibration logic mentioned previously and to be explored hereinbelow, and by recent calibration BG/Isig ratios), the calibration buffer may undergo partial clearing. Lastly, whereas prior algorithms may have employed an expected calibration factor (CF) weight which was a constant, embodiments of the invention provide for a variable CF value based on sensor age.
In short, embodiments of the invention provide for variable calibration error thresholds based on expectation of error during calibration attempt, as well as issuance of calibration error message(s) without waiting for additional sensor data, less delay in calibrating (e.g., 5-10 minutes), updated expected calibration factor value based on sensor age, and partial clearing of the calibration buffer as appropriate. Specifically, in connection with First Day Compensation (FDC), embodiments of the invention provide for requesting additional calibrations when higher Cal Factor thresholds are triggered in order to more expeditiously correct sensor performance. Such higher CF thresholds may be set at, e.g., between 7 and 16 mg/dL/nA, with the latter serving as the threshold for indication of calibration error in embodiments of the invention.
Thus, in one aspect, if a high CF threshold is triggered after the first calibration, the system requires that the next calibration be performed in 3 hours. However, if a high CF threshold is triggered after the second, or subsequent, calibration, the system requires that the next calibration be performed in 6 hours. The foregoing procedure may be implemented for a period of 12 hours from sensor connection.
In another aspect, the expected Cal Factor, which is used during calibration to calculate the Cal Factor, is increased over time so as to reduce the likelihood of under-reading. By way of background, existing methodologies may use a fixed expected Cal Factor throughout the sensor life, without accounting for possible shifts in sensor sensitivity. In such methodologies, the expected Cal Factor may be weighted in calculating the final Cal Factor, and used to reduce noise.
In embodiments of the present invention, however, the expected CF is calculated as a function of time, expressed in terms of the age of the sensor. Specifically,
where Sensor Age is expressed in units of days. In further embodiments, the expected Cal Factor may be calculated as a function of the existing CF and impedance, such that any changes in sensitivity may be reflected in the expected CF. In addition, in aspects of the invention, expected CF may be calculated on every Isig packet, rather than doing so only at a BG entry, so as to gradually adjust the Cal Factor between calibrations.
In connection with calibration buffer and calibration error calculations, embodiments of the invention provide for modification of calibration buffer weights and/or clearing of the calibration buffer. Specifically, when impedance measurements (e.g., through EIS) indicate that the Cal Factor might have changed, and a calibration attempt indicates that a change might have occurred, the change in Cal Ratio (CR) is checked by comparing the CR of the current BG to the most recent CR in the calibration buffer. Here, such a change may be verified by, e.g., values of the 1 kHz impedance, as detailed previously in connection with related EIS procedures. In addition, weights may be added in the calibration buffer calculation based on reliability indices, the direction in which the Cal Factor is expected to change, and/or the rate of change of calibration. In the latter situation, e.g., a lower weight may be assigned, or CF only temporarily updated, if calibration is on a high rate of change.
In embodiments of the invention, selection of filtered Isig (fIsig) values for the calibration buffer may be initiated on the second Isig packet after BG entry. Specifically, the most recent of the past three (3) fIsig values that would not cause a calibration error may be selected. Then, once accepted for calibration, the calibration process will proceed without a calibration error being issued. Such calibration error may be caused, e.g., by an invalid Isig value, a Cal Ratio range check, a percentage error check, etc.
In other embodiments, values of fIsig may be interpolated to derive a one-minute resolution. Alternatively, fIsig values may be selected from recent values based on the rate of change in the values (and accounting for delays). In yet another alternative embodiment, fIsig values may be selected based on a value of CR that is closest to a predicted CR value. The predicted CR value, in turn, is closest to the current value of the Cal Factor, unless the latter, or EIS data, indicate that CF should change.
As noted previously, in connection with
The methodology starts at block 9005, where 1 kHz real impedance values are filtered using, e.g., a moving average filter, and, based thereon, a determination is made as to whether the EIS-derived values are stable (9010). If it is determined that the EIS-derived values are not stable, the methodology proceeds to block 9015, wherein a further determination is made based on the magnitude of the 1 kHz impedance. Specifically, if both the filtered and unfiltered values of 1 kHz real impedance are less than 7,000Ω, then EIS is set as stable (9020). If, on the other hand, both the filtered and unfiltered values of 1 kHz real impedance are not less than 7,000Ω, then EIS is set as unstable (9025). It is noted that the above-described 7,000Q threshold prevents data blanking or sensor termination for sensors that have not stabilized.
When EIS is stable, the algorithm proceeds to block 9030. Here, if the 1 kHz real impedance is less than 12,000Ω (9030), and also less than 10,000Ω (9040), the algorithm determines that the sensor is within normal operating range and, as such, allows sensor data to continue to be displayed (9045). If, on the other hand, the 1 kHz real impedance value is greater than 10,000Ω (i.e., when the 1 kHz real impedance is between 10 kΩ and 12 kΩ), the logic determines whether the 1 kHz real impedance value has been high (i.e., greater than 10 kΩ) for the past 3 hours (9050). If it is determined that the 1 kHz real impedance value has been high for the past 3 hours, then the sensor is terminated at 9060, as the sensor is assumed to have pulled out, rendering sensor data invalid. Otherwise, the sensor is not terminated, as the sensor signal may be simply drifting, which, as discussed previously, may be a recoverable phenomenon. Nevertheless, the sensor data is blanked (9055) while the sensor is given a chance to recover.
It is noted that, in further embodiments, in determining whether data should be blanked, or the sensor terminated, the logic may also consider, in addition to the above-mentioned thresholds, sudden increases in impedance by, e.g., comparing impedance derivatives to historical derivatives. Moreover, the algorithm may incorporate noise-based blanking or termination, depending on the duration of high noise-low sensor signal combination. In this regard, prior methodologies included termination of the sensor after three (3) consecutive 2-hour windows of high noise and low sensor signal. However, in order to prevent unreliable data from being displayed to the user, embodiments of the invention employ noise-based blanking, wherein the algorithm stops calculating SG values after 2 consecutive 2-hour windows (i.e., at the start of the third consecutive window) involving high noise and low signal. In further aspects, the algorithm may allow further calculation and display of the calculated SG values after one hour of blanking, rather than two hours, where the sensor signal appears to have recovered. This is an improvement over methodologies that blank otherwise reliable data for longer periods of time.
Whereas 1 kHz real impedance may be used to detect sudden sensor failures, measurements of imaginary impedance at higher frequencies (e.g., 8 kHz) may be used to detect more gradual changes, where sensor sensitivity has drifted significantly from its typical sensitivity. In this regard, it has been discovered that a large shift in 8 kHz imaginary impedance typically signifies that the sensor has experienced a large change in glucose sensitivity or is no longer stable.
Embodiments of the invention are also directed to assessment of reliability of sensor glucose values, as well as estimation of sensor-data error direction, in order to provide users and automated insulin delivery systems—including those in closed-loop systems—an indicator of how reliable the system is when SG is displayed to the user. Depending on the reliability of sensor data, such automated systems are then able to assign a corresponding weight to the SG and make a determination as to how aggressively treatments should be provided to users. Additionally, the direction of error can also be used to inform users and/or the insulin delivery system in connection with SG being a “false low” or a “false high” value. The foregoing may be achieved by, e.g., detecting dips in sensor data during the first day (EIS dip detection), detecting sensor lag, and lower-frequency (e.g., 10 Hz) impedance changes.
Specifically, in accordance with an embodiment of the invention, it has been discovered that a Cal Factor (CF) of above about 9 mg/dL/nA may be indicative of low sensor reliability and, as such, a predictor of higher error. Thus, CF values outside of this range may be generally indicative of one or more of the following: abnormal glucose sensitivity; calibrations that occurred during a dip in signal; delay in entering BG information, or high rate of change when calibrating; BG error when calibrating; and sensor with a transient change in glucose sensitivity.
Returning to block 9106, if less than 12 hours have passed since sensor start, then an inquiry is made regarding the recent EIS, Isig, and SG values. Specifically, in block 9110, if the two most-recent real impedance values (at 1 kHz) have been increasing, Isig<18 nA, and SG<80 mg/dL, then the algorithm determines that the start of a dip has been detected and notifies the system to stop displaying SG values (9112). On the other hand, if all of the foregoing conditions are not met, then there will be no dip detection or data blanking (9108).
When it is determined, at block 9104, that less than 4 hours have passed since sensor start, then a sensor dip event may still be encountered. Specifically, if the two most-recent EIS (i.e., 1 kHz impedance) values are increasing, and Isig<25 nA, then the algorithm determines that the start of a dip has been detected and notifies the system to stop displaying SG values (9114, 9116). If, however, the two most-recent 1 kHz impedance values are not increasing, or Isig is not less than 25 nA, then there will be no dip detection or data blanking (9108), as before.
Returning to block 9102, if it is determined that data is currently being blanked due to a dip, there is still a possibility that data will nevertheless be shown. That is, if Isig is greater than about 1.2 times Isig at the start of the dip event (9118), then it is determined that Isig has recovered, i.e., the dip event is over, and data display will resume (9122). On the other hand, if Isig is not greater than about 1.2 times Isig at the start of the dip event (9118), then it is determined that Isig has not yet recovered, i.e., the dip event is not over, and the system will continue to blank sensor data (9120).
In accordance with embodiments of the invention, the direction of error in SG (under-reading or over reading), in general, may be determined by considering one or more factors related to under- and/or over-reading. Thus, it has been discovered that under-reading in sensors may occur when: (1) Vcntr is extreme (e.g., Vcntr<−1.0 V); (2) CF is high (e.g., CF>9); (3) lower frequency impedance (e.g., at 10 Hz) is high (e.g., real 10 Hz impedance >10.2 kΩ); (4) FDC is in low CF mode; (5) sensor lag suggests under-reading; (6) lower frequency impedance (e.g., at 10 Hz) increases (e.g., 10 Hz impedance increases over 7000); and/or (7) EIS has detected a dip. Over-reading, on the other hand, may occur when: (1) lower frequency impedance (e.g., 10 Hz) decreases (e.g., lower frequency impedance <−200Ω); (2) sensor lag suggests over-reading; and/or (3) FDC when CF is in extreme mode.
Such under-reading or over-reading, especially in closed-loop systems, can have a profound impact on patient safety. For example, over-reading near the hypoglycemic range (i.e., <70 mg/dL) may cause an overdose of insulin to be administered to the patient. In this regard, several indicators of error direction have been identified, which may be used as test criteria, including: (1) low sensitivity indicators; (2) sensor lag; (3) FDC mode; and (4) loss/gain in sensitivity since calibration.
Two such low sensitivity indicators are high (lower-frequency) real impedance (e.g., >10 kΩ) and high Vcntr (e.g., Vcntr<−1.0V), both of which are, in general, indicative of loss of sensitivity.
As discussed previously, (EIS) sensor dips are also indicative of temporary sensitivity loss. Similarly, a high Cal Factor is indicative of the sensor's attempt to compensate for reduced sensitivity. In one example shown in
As mentioned previously, sensor lag is another indicator of error direction. Accordingly, in an embodiment of the invention, the error that is caused by sensor lag is compensated for by approximating what the glucose value will be. Specifically, in an embodiment of the invention, the error from sensor lag may be approximated by defining:
sg(t+h)=sg(t)+hsg′(t)+½h2sg″(t)
where sg(t) is the sensor glucose function, and “h” is the sensor lag. The error may then be calculated as
First day calibration (FDC) occurs when the Cal Factor (CF) is not within the expected range. The CF is set to the value indicated by the calibration, and then ramps up or down to the expected range, as shown, e.g., in
Lastly, post-calibration sensitivity change, i.e., loss/gain in sensitivity since calibration, is also an indicator of error/error direction. Under normal circumstances, and except for first day calibration as discussed hereinabove, the Cal Factor remains generally constant until a new calibration is performed. Shifts in sensitivity after calibration, therefore, can cause over-reads and under-reads which, in turn, may be reflected by values of lower-frequency (e.g., 10 Hz) real impedance.
Specifically, it has been discovered that a drop in lower-frequency real impedance causes over-reading, with the direction of error being indicated by the real impedance curve. Conversely, lower-frequency real-impedance increases cause under-reading, with the direction of error also being indicated by the real impedance curve. However, current directionality tests may be unable to readily decipher points at peaks and valleys of the glucose profile. Thus, in one embodiment, the degree of sharpness of such peaks and valleys may be reduced by filtering, such as, e.g., by deconvolution with lowpass filtering.
As described previously in connection with
It is known that, in some existing continuous glucose monitoring systems (CGMS), calibration fingersticks are required every twelve hours. The calibration allows the CGMS to update the function used to convert the measured sensor current into a displayed glucose concentration value. In such systems, the 12-hour calibration interval is selected as a balance between reducing the user burden (of performing too many fingersticks) and using an interval that is sufficient to adjust for changes in sensor sensitivity before inaccuracies can cause too large of a problem. However, while this interval may be appropriate in general, if the sensor sensitivity has changed, 12 hours can be too long to wait if a high level of accuracy (in support of closed loop insulin delivery) is expected.
Embodiments of the invention, therefore, address the foregoing issues by using the previous calibration factor (see discussion of FDC below), or impedance (see discussion of EIS-based “smart calibrations” below), to predict if sensitivity has changed. Aspects of the invention also use time limits to maintain predictability for users, as well as include steps (in the associated methodology) to ensure that detection is robust to variations between sensors.
In contrast with FDC mode, EIS-based smart calibration mode provides for additional calibrations if impedance changes. Thus, in an embodiment of the invention shown in
Returning to block 9160, if it is determined that less than one hour has passed since calibration, then the range for impedance values may be updated (9166). Specifically, in one embodiment, the impedance range calculation is performed on the last EIS measurement 1 hour after calibration. In a preferred embodiment, the range is defined as
range=3×median(|xi−xj|)
where j is the current measurement, and i are the most recent 2 hours of values. In addition, the range may be limited to be values between 50Ω and 100Ω. It is noted that the range as defined above allows for 3 times median value. The latter has been discovered to be more robust than the 2-standard-deviation approach used in some prior algorithms, which allowed noise and outliers to cause inconsistencies.
As has been discussed in detail herein, most continuous glucose sensor monitoring (CGM) systems require finger-stick blood glucose measurements for calibration. For real-time systems, it can be difficult to determine changes in sensor behaviors, such as sensitivity or sensor anomaly, at the time of the data output. Therefore, calibration using a finger-stick measurement is needed to assure sensor accuracy. Calibration using fingersticks, however, is not only painful, but also cumbersome for the user. Embodiments, therefore, have been directed to retrospective calibration-free algorithms for continuous sensor recorders, including use of the ASIC previously described in detail herein. In this regard, as was noted previously in connection with EIS-related algorithms and calibration, within the context of the instant description, the term “calibration-free” does not mean that a particular sensor needs no calibration at all. Rather, it means that the sensor can self-calibrate based on the data that is stored in the sensor recorders, without the need for additional finger-stick or meter data. Thus, the need for finger-stick measurements to provide a reference can be eliminated for retrospective systems.
Retrospective sensor systems have the ability to have the entire traces of raw signals available for use by an algorithm before processing and converting to glucose values. Specifically, sensor recorders may record the raw signals, such as, e.g., Isig and Vcntr, as well as EIS data for diagnostics. As shown in
The processing of the raw Isig signal may use a unified and simplified function to handle several anomalies such as artifacts and noisy signals. In addition, signal smoothing (9220) may be accomplished by using a polynomial model for local regression with weighted linear least squares. Effects of outliers are reduced by assigning less weight. Retrospective processing allows local regression to be done with forward and backward data, with the smoothing having no phase delay as seen in most real-time filtering. Following the smoothing, noise calculation is performed. Noise calculation (9225) is based on evaluating the difference between the raw and smoothed signal and calculating the percentage of data within a defined window that has high noise-to-signal ratio. EIS data may also be smoothed using a similar retrospective smoothing function (9235). After smoothing of the EIS data, the EIS data may then be interpolated to generate EIS data that match the timestamps of the Isig data.
In one embodiment, discrete wavelet transform may be applied on the raw Isig signals (9215). The transform operation decomposes the Isig signal into several predefined levels. At each level, the algorithm generates the coefficients for approximation and detail signals, where the approximations are the high-scale, low-frequency components of the signal, and the details are the low-scale, high-frequency components of the signal. For the approximation signals, the lower level approximation captures the short-term variations and the higher-level approximation captures the long-term trend. Discrete wavelet transform may also be used as a valuable tool in identifying regions with sensitivity loss in the signal.
Machine learning techniques may be used, e.g., for generating the models for converting signals into SG values (9240) as a function of measured signals (e.g., Isig, Vcntr, EIS, etc.). In embodiments, three specific techniques may be used, including genetic programming (GP), artificial neural network (NN), and regression decision tree (DT). To generate the training data set, blood glucose (BG) measurement values and the associated Isig, Vcntr, wavelet and EIS data points are extracted. Preprocessing of the data can also be done to improve the model being generated. Preprocessing steps include reducing the number of data points that are close in time, adjusting the distribution of points within a certain glycemic range to reduce overemphasis at that (BG) range, and removing outliers to reduce/eliminate BG points with high variations.
Genetic programming (GP) is based on rules that imitate biological evolution. Combining basis functions, inputs, and constants creates an initial model population. The models are structured in a tree-like fashion, with basis functions linking nodes of inputs. In each generation (iteration) of the algorithm, relatively successful individuals are selected as “parents” for the next generation and form a reproduction pool. New generations of solutions evolve, using one of three possible operators: crossover, mutation, and permutation. The procedure is repeated until a stopping criterion is attained. In one embodiment, examples of training results may include:
GP1:
sg=(u2.*−0.083513−0.48779.*((u1+0.11432.*u6).*u33))−0.30892
GP2:
sg=(u4.{circumflex over ( )}2−0.55328*u4−0.46565*u45−1.5951*u2)*0.13306+0.88185*u1−0.40782
GP3:
sg=((u4.{circumflex over ( )}2).{circumflex over ( )}2−7.8567*(u2+0.33071*u43))*0.02749+0.88109*u1−0.38492
where
Neural networks are composed of simple elements operating in parallel. These elements are inspired by biological nervous systems. As in nature, the connections between elements largely determine the network function. A neural network model is trained to perform a particular function by adjusting the values of the connections (weights) between elements. The back propagation (BP) neural network algorithm, a multi-layer feedforward network trained according to error back propagation algorithm, may be used, with inputs including, e.g., Isig, Vcntr, EIS, wavelets, duration (i.e., time since sensor insertion), etc., to produce a BG output.
In a decision tree, the model is comprised of several nodes in which splitting of the population occurs and the output is comprised of several regression models. For a numeric prediction, a regression tree may be used which, in turn, uses measured inputs (including, e.g., Isig, Vcntr, EIS, wavelets, etc.), to produce a BG as output in the training. Initially, a starting tree is built from top down. At each node, a decision is made on a variable and split into subsets. Splitting is based on maximizing the purity of each node. The results at the bottom are the leaves, wherein each leaf is a linear model relating the SG with the input variables. Pruning can be done to reduce the number of splits.
Returning to block 9304, when Isig is <34.58 nA, a further decision is made as to whether Isig is <19.975 nA (9308). If it is, then, if Vcntr<−0.815V, then a first Linear Model (LM1) is employed (9312). Otherwise (i.e., if Vcntr>−0.815V), then a second Linear Model (LM2) is used (9314). If, on the other hand, Isig>19.975 nA, then a further decision is made at block 9310. Here, if wavelet10 (w10)<27.116, then a third Linear Model (LM3) is used (9316). However, if wavelet10>27.116, then a fourth Linear Model (LM4) is used to calculate SG (9318).
Fusion of the SGs may be performed to generate a single output SG. As has been discussed hereinabove, fusion may be done by assigning weights to each of the SGs based on various inputs, and then combining the outputs. In preferred embodiments of the invention, such inputs may include EIS, Isig, duration, and wavelets. Other methods for signal fusion may also be utilized.
In embodiments of the invention, blanking of the data may be performed on the final SG to prevent displaying of unreliable signals. Blanking based on noise is done by setting thresholds on the noise level and blanking the data above the threshold. Blanking based on EIS, Isig, Vcntr, wavelets, as well as other factors, may also be performed. A decision tree may also be used to generate blanking models that combine the various inputs. For example, a decision tree may be used to identify “good” or “bad” points in a training set. In an embodiment of the invention, a threshold may be set on Cal Ratio (as a good indicator of sensitivity loss), with points having a Cal Ratio above the threshold identified as “bad” points.
In embodiments herein, an outlier detection algorithm may be used as a diagnostic tool, including fusion, selective filtering, and blanking of data. Specifically, the fusion algorithm may fuse sensor glucose values from, e.g., a decision tree (DT) algorithm and genetic programming (GP), based on approximated error difference. Selective filtering entails filtering of the fused SG values and spike removal. A blanking algorithm may be based on approximated error prediction.
More particularly, the above-mentioned fusion algorithm may include examining the difference between decision tree Absolute Relative Difference (ARD) and genetic programming ARD at each BG point, as each of DT and GP has respective areas with better performance. The difference is then fit by a linear regression combination of parameters, inputs, and functions of parameters, including, e.g., SG, CR, imaginary impedance, real impedance, noise, rate of change, sensor gain, cumulative Vcntr rail time, etc. Thus, e.g.:
ARDDT−ARDGP=Σweightn×paramn
where the parameter list and weights are updated with every iteration of DT and GP. The parameters are automatically pruned one by one based on removing the lowest sensitivity, until a final set of parameters and coefficients is obtained. The expected difference is then transformed into a weight ([0,1]) for DT and GP for generating a weighted average of SG values:
Selective sensor glucose (SG) filtering allows noisy segments of SG to be smoothed, rather than blanked, so that SG display may continue without disruption. Thus, selected sections may be smoothed using a filter that turns on at high noise. In this regard, in one embodiment, spikes in SG may be detected by the second derivative and removed, with SG selectively smoothed by, e.g., a 12-point, low-pass infinite impulse response (IIR) filter on low signal-to-noise ratio (SNR) points.
As noted, a blanking algorithm may be based on approximated error prediction, i.e., model prediction of error at each point. In this regard, coefficient weights may be generated by fitting the model to ARD at each BG point in training data. Thus:
where SG is blanked when expected ARD is above a threshold.
In some embodiments, the foregoing algorithms may also be applied to real-time systems, where real-time information (e.g., Isig, Vcntr, real-time EIS with zeroth-order hold, etc.) may be used as inputs. In contrast to the retrospective algorithms, real-time algorithms may be generated that do not use interpolated EIS or wavelets.
As noted hereinabove, to reduce the computational burden of glucose value estimation, glucose sensing systems aim to create a linear relationship between blood glucose (BG) and sensor current (Isig) values such that their ratio yields a constant calibration factor (CF), for all glucose levels of interest, expressed as
CF=BG/(Isig+offset)
Here “offset” is an assumed constant sensor bias. When glucose sensing is based on measurements from interstitial fluids, the cumulative effect of the lag in the translation of glucose from blood to interstitial fluid and spurious sensor measurement noise leads to a time-varying calibration factor and “offset” and a more complex sensor sensitivity relationship that may be linearly approximated as
SG=CF(Isig+offset)+εs
where SG is the sensor glucose value, and εs represents the random time-varying sensor error. A reference BG level is usually measured using a finger stick procedure. In general, this measurement differs from the SG value implied by a linear relationship between BG and Isig by a prediction error value (Ep). That is,
BG=SG+εP.
There is also a first order lag between SG and the physical sensor current output, Isig. Thus:
where τ is a dynamic time variable that characterizes the dynamic relationship between SG and Isig. It should be noted that τ is not known precisely as it can vary by sensor type, patient physiology, sensor insertion location, wear time, and other variables.
Embodiments of the inventions herein may use modeling algorithms, including logic that combines values of Isig, electrochemical impedance spectroscopy (EIS), counter electrode voltage (Vcntr), and wear time, as well as their trending values to model τ and the prediction error value εP. The estimate of the prediction error εP produced by the modeling process is called the model estimated error, or εM. The difference between the prediction error εP and the model estimated error εM is the residual error, or εR. The residual error is the portion of the prediction error εP that is not captured by the modeling process and not incorporated into εM. In other words,
εP=εM+εR.
The better the modeling process is at estimating εP, the lower the value of residual error εR, and the more accurate the prediction models obtained will be. So typically,
εR<<εP.
Success in modeling SG can be measured by the attained success in reducing εR. When choosing between a plurality of modeling options, preference is given to models that produce relatively lower εR as they are likely to provide a better correction for dynamic changes in sensor sensitivity and systemic sensing biases due to manufacturing and use variability.
In embodiments herein, the error reduction may be achieved through various mechanisms. As described in more detail hereinbelow, in one embodiment, e.g., a plurality of independent sensor glucose calculation units—e.g., four—may be used, wherein each unit may implement a distinct dynamic model of interstitial glucose sensing that variously accounts for nonlinearities in glucose sensing response caused by such factors as bio-fouling, foreign body response, nonlinear sensor response curves, particularly during hypoglycemia, and variations in chemistry layer stabilization and settling times. In embodiments, an external calibration module may be used to determine whether external physiological measures (PM) and/or environmental measures (EM) are available for use in calibrating the glucose sensor, and, when available, to convert the PM and/or EM into a modification factor that may be incorporated into the calculation of the SG value. Thus, embodiments of the inventions herein enable adjustment of SG calculation to account for changes in a user's environment and physiology in real time.
More specifically, as shown in
As shown in
εR=ƒ(εS,εI,εT)
In embodiments of the inventions herein, the dynamic sensing models were chosen to be different from each other and yet to each yield approximately the same value of residual error, εR, and exhibit unique patterns of strengths and weaknesses. The strengths of the models therefore augment each other and mitigate potential weaknesses of the group.
For a randomly chosen sensor,
In embodiments herein, confidence in the fused sensor glucose value, or CSG, may be calculated through various mechanisms within blocks 9411, 9416, and/or 9413. As described in more detail hereinbelow, in one embodiment, the measure of confidence is obtained from the relation between the absolute range of the SG values produced by the respective sensing units, or RSG, and an experimentally determined threshold value TR, e.g.,
In one preferred embodiment, the threshold may be set as 10 mg/dL. In a different embodiment, the experimentally determined threshold may not be a fixed value for all glucose ranges, but a fraction, e.g., 10%, of the magnitude of the absolute mean of the values produced by the respective sensing units.
In another embodiment, described in more detail herein, the measure of confidence may be obtained in two steps. In the first step, a measure of the dispersion of the values produced by the respective sensing units, e.g., their standard deviation, absolute range, inter-quartile range, etc. is divided by the mean of the individual values to obtain a generalized normalized dispersion ratio, or DSG. In the second step, the confidence value, or CSG, is produced from the relation between DSG and a threshold value TD, e.g., as
In a preferred embodiment, DSG was the coefficient of variation (the standard deviation of the values produced by the sensing units divided by their mean value) and the threshold value was set to 15% for mean values less than 70 mg/dL and 20% for mean values greater than 70 mg/dL.
In one preferred embodiment, RPM and REM values are determined to be valid if they satisfy two conditions: (1) they are “regular” or fall within experimentally determined normal ranges; and (2) they are “actionable” or indicated by the system and/or user as informative enough that variations in their value could be expected to affect sensor glucose value estimation. Information on which supported RPM and REM values are “actionable” is input into the system through a user interface, e.g., a touchscreen of a pump, a graphical user interface, a glucose monitoring mobile application, etc.
For instance, using the heart rate measurement obtained from a wearable device, experiments have shown that RPM values associated with heart rate measurements outside of the range 75 to 155 beats per minute are invalid and RPM values associated with body temperature measurements outside of the range 33 to 38 degrees Celsius are invalid as well. Other experiments have shown that REM values associated with ambient temperature outside of the range 10 to 50 degrees Celsius obtained from a wearable device are invalid. In this case, temperatures outside of the stated range appeared to interfere with the proper working of the electronics of the sensor system.
In embodiments, aggregation of RPM and REM values may comprise two steps. In the first step, the values are normalized (e.g., by a microcontroller) using a normalization function, e.g., subtracting each value from its minimum expected amount (e.g., 75 beats per minute for heart rate, 33 degrees Celsius for body temperature, and 10 degrees Celsius for ambient temperature) and dividing the result by the magnitude of its expected range (e.g., 155-75 beats per minute for heart rate, 38-33 degrees Celsius for body temperature, and 50-10 degrees Celsius for ambient temperature). In the second step, the normalized values are scaled using scaling functions, such as, e.g.,
Returning to
In one embodiment, the fusion process (9442) between the PCF and ECF values to calculate the modification factor, MF, may comprise a simple multiplication of the respective factors. Thus, for this embodiment, MF may be defined as follows:
MF=PCF×ECF.
In another embodiment, the combination may comprise selecting the maximum value between the respective factors. Here,
MF=max(PCF,ECF).
In yet another embodiment, the combination may comprise selecting the average of the two factors, such that MF is defined as follows:
MF=(PCF+ECF)×0.5.
More specifically, the value of each obtained (raw) physiological measurement is first compared to a normal range or, alternatively, to a threshold value (9462, 9472, 9482, 9492). For example, in embodiments, the experimentally determined normal range for body temperature may be 33 to 38 degrees Celsius as measured by wearable device. Similarly, the normal range for heart rate may be 75 to 155 beats per minute as measured by a wearable device. If the obtained value is found to be valid based on this comparison, then the respective value is used to generate a factor for the respective physiological measurement (9463, 9473, 9483, 9493). If the obtained value fails the latter test, then it is determined whether the value is nevertheless actionable (9465, 9475, 9485, 9495), in which case the value is still used in generating the respective factor. A value may be considered to be actionable if, e.g., by user interface selections, it is indicated by the system and/or user to be informative enough that variations in its value could be expected to affect sensor glucose value estimation. However, if the obtained value is determined not to be actionable, then a factor is not generated for that specific physiological parameter (9467, 9477, 9487, 9497). Finally, as noted above, all of the valid measurements are then combined at 9499 to generate a physiological calibration factor (PCF).
Similarly, as shown in
More specifically, the value of each obtained (raw) environmental measurement is first compared to a normal range or, alternatively, to a threshold value. (9512, 9522, 9532, 9542). For example, in embodiments, the experimentally determined normal range for ambient temperature may be 10 to 50 degrees Celsius as measured by wearable device. If the obtained value is found to be valid based on this comparison, then the respective value is used to generate a factor for the respective environmental measurement (9513, 9523, 9533, 9543). If the obtained value fails the latter test, then it is determined whether the value is nevertheless actionable (9515, 9525, 9535, 9545), in which case the value is still used in generating the respective factor. A value may be considered to be actionable if, e.g., by user action (e.g., through a graphical user interface on a glucose pump system or a software application), it is indicated by the system and/or user to be informative enough that variations in its value could be expected to affect sensor glucose value estimation. However, if the obtained value is determined not to be actionable, then a factor is not generated for that specific environmental parameter (9517, 9527, 9537, 9547). Finally, as noted above, all of the valid measurements are then combined at 9549 to generate an environmental calibration factor (ECF).
In embodiments of the invention, the conversion scale may include either boosting or suppressing. In this regard,
In embodiments, the external calibration is a measure of blood glucose concentration obtained from continuous glucose monitoring systems that may be similar to, or dissimilar from, the systems described herein. An example of a system that is different from that described herein would be importing SG measurements from the Abbott FreeStyle Libre Professional CGM. Here, the SG reading is used as an externally calibrated BG value and either used to calibrate each of the SG generating units or integrated into the aggregated SG calculation, by, for example, adjusting the variance estimate of each SG generating unit. The variance estimate of the output of an SG generating unit is an estimate of the expected accuracy variation with which the SG calculating unit is expected to predict SG values (e.g., within a specified glucose range on a specified sensor wear day) obtained from analyzing the SG calculating unit's past performance predicting SG values under similar conditions.
In embodiments, the first step in calculating variance estimates for SG calculating units is to obtain distributions of SG predictions over a large glycemic range and across multiple days of sensor wear using, e.g., past clinical study data input. Within each bin, comprising, e.g., a sensor wear range and a glycemic range, the mean of the square difference between the SG produced by the SG calculating unit and the BG supplied by a reference method is determined.
On the other hand, an example of using external calibration measures from a device that is similar to those described herein may involve, e.g., overlapping two sensors, inserted into the body at different times, in such a way that the second sensor is inserted towards the end of life of the first sensor, so that the first sensor reaches its end of life by the time the second sensor is warmed up and ready for normal operation. In this embodiment, the first sensor is the primary source of SG values to a third device, such as a glucose pump system or hand-held glucose monitor device, until the second sensor is warmed up, at which time the second sensor becomes the primary source of SG values to a third device. This arrangement could be used to prevent loss of SG values to the third device due to downtime during sensor warm up. The SG value is handled similar to the embodiment with the Abbott FreeStyle Libre Professional CGM.
Embodiments of the inventions herein may be implemented in connection with hybrid closed-loop (HCL) systems, while other embodiments allow for use in standalone CGM systems. In the former, the system may have transmitters that communicate with an insulin pump supporting a HCL algorithm via a proprietary radio-frequency protocol. In the latter embodiment, the communication protocol may be Bluetooth Low Energy Technology supported through a mobile device display application. When supporting an HCL system, the transmitter may include logic to ensure sensor values reliably support insulin dosing.
Embodiments of the inventions herein are also directed to methods and systems for correcting for manufacturing batch variations in sensor parameters in sensor glucose modeling. Specifically, the manufacture of sensors used in continuous glucose monitoring (CGM) devices adheres to fixed tolerances to ensure that sensors produced are of consistent quality and exhibit similar performance. In practical applications, differences in performance between sensor batches still exist. This is often evident when the performance of batches of sensors are compared over extended time periods. This variability in performance due to variations in manufacturing parameters/processes often means that algorithms for sensor glucose estimation are designed and tested on sensor batches that may have different performance profiles from those of future (i.e., subsequently-manufactured/tested) sensors to which the algorithm may be applied in the field. This, in turn, could lead to systemic bias, as well as hard-to-track errors in sensor glucose estimation.
Specifically,
As noted previously, calibration-free sensors provide users with better sensor wear experiences, reduce discomfort associated with using CGM devices, and reduce errors that may be introduced by using BGs to augment the performance of CGMs. In this regard, embodiments of the inventions herein provide methods, including systems and algorithms, for correcting for manufacturing batch variations in sensor parameters in sensor glucose modeling using factory calibration techniques. As shown in
In embodiments, the factory calibration focuses on determining a correction factor for each of three key input signals: 1 kHz real impedance, 1 kHz imaginary impedance, and counter voltage (or Vcntr). In embodiments, the population distributions of the three features are determined by characterizing the output of 1821 sensors worn by 537 subjects. The mean, standard deviation and interquartile variances of each distribution is obtained and provided as reference (or standard) metrics (9622). Similar distribution metrics are obtained for each sensor batch that is to be factory calibrated. The factory calibration procedure, in embodiments, involves calculating for each of the three input signals: (a) the difference between the mean of the batch distribution and the mean of the reference distribution; (b) determining the ratio between the batch distribution standard deviation and the reference distribution standard deviation; (c) determining the difference between the interquartile ranges of the batch and reference distributions; and (d) determining the ratios between the interquartile ranges of the batch and reference distributions. These difference and ratio values are the correction parameters that, when applied to inputs from sensors from the sensor batch, can transform them to their equivalent values in the reference distribution.
In embodiments, the four correction factors obtained from each of the key input signals may be together treated as a four-dimensional index of a bin in a 4-by-4-by-4-by-4 matrix, where each dimension corresponds to each correction factor and the bin boundaries are obtained by evenly dividing the experimentally determined maximum and minimum values of each correction factor. For example, the correction factor quartet of 15:0.89:12:0.93 may become: 2:1:2:3. This means that there are at most 16 different configurations of correction factors that can be assigned to sensor batches, and only sixteen correction equations need to be determined for transforming signals from each sensor batch into their equivalent reference signal value. It should be understood that though the indexing structure used in this illustration was a 4-by-4-by-4-by-4 matrix, other indexing structures with more or fewer dimensions and bins per dimension are also possible.
At Block 9639, the plurality of individual (factory calibrated) SG values are fused to generate a final, single (fused) SG value. In Block 9641, diagnostics are performed on the fused SG to detect and, where possible, correct errors before the (corrected) final SG may be displayed (e.g., to a user of the glucose sensor) and/or transmitted (e.g., to a receiving device) to be used for therapy, in Block 9643. Where correction is not possible, however, the fused SG value may be blanked, so that it is not shown to the user and/or not used for therapy. It is noted that, although four SG calculating units are shown in
In an embodiment of the invention, the activation sequence of the sensor involves pairing the glucose estimation algorithm with the factory parameters. In another embodiment, the factory parameters are auto-encoded into the sensor's transmitter and automatically activated upon activation of the sensor prior to use.
In one embodiment, the generation of the factory calibration metrics involves analyzing all the input sensor characteristic features to the SG calculation for fitness. From sensor data collected from a plurality of sensors, pairs of points separated by: (a) a single measurement period (e.g., five minutes in this case); (b) a single day; and (c) up to 5 days may be selected and their differences evaluated.
In a preferred embodiment of the invention, feature selection is limited to features with acceptable histograms. Each feature may further be put through a perturbation analysis, as shown in
Specifically,
In a preferred embodiment, the means and standard deviations of the best ranked features may be set as the standard metric for the factory calibration. Determining the batch sampling metric involves a similar process as determining the standard metrics. Generating factory calibration data involves determining a mathematical transformation that can modify the histograms of data generated from each batch to make them similar to the histograms of the data used to generate the standard metric. Application of the standard metric involves applying this transformation to the data generated when the sensor is in operation.
In embodiments of the invention, the algorithm may be implemented on existing CGM platforms. An embodiment allows for use with hybrid closed-loop (HCL) systems. Another embodiment allows for use in stand-alone CGM systems. In the former embodiment, the system may have transmitters that communicate with an insulin pump supporting a HCL algorithm via a proprietary radio-frequency protocol. In the latter embodiment, the communication protocol may be, e.g., Bluetooth Low Energy Technology that is supported through a mobile device display application. When supporting an HCL system, the transmitter may include logic to ensure sensor values reliably support insulin dosing.
As has been previously discussed, in a normally operating glucose sensor, measured current, Isig is designed to be proportional to measured glucose concentration (SG), thus
Measured Glucose=Calibration Factor×(Measured Current+offset)
and
Calibration Factor=Base Calibration Factor×Baseline Adjustment.
As will be explored further hereinbelow, a theory-based glucose sensor model based on sensor fundamentals can be built piece-by-piece from learnings from in-vitro and in-vivo experimentation with sensors focused on deciphering the components of the base calibration factor, the baseline adjustment and the offset component. In contrast to some of the models based on machine learning methods previously described, the analytical optimization model that results from the piecewise evaluation of the effect of various processes on sensor chemistry and subject physiology is comprehensible, modularized, easier to explain to regulatory bodies and complements models developed through machine learning and other approaches.
The underlying assumption is that the role of input features such as the full suite of real and imaginary impedance values and counter voltage values is to correct for errors from the expected linear glucose/current relationship that is due to physiology, bio-fouling, sensitivity loss, sensor variation and other aberrant processes. Thus, a methodology for estimating the output sensor glucose value of a glucose sensor by analytically optimizing input sensor signals including sensor current, electrochemical impedance spectroscopy measurements, counter voltage and sensor age, measured as time from sensor insertion or another sensor wear milestone, may be described to accurately correct for changes in sensitivity, run-in time, glucose current dips, and other variable sensor wear effects, thereby helping to achieve the goal of improved accuracy and reliability without the need for blood-glucose calibration.
In embodiments, the base calibration factor is the primary estimate of the sensor sensitivity, modeled by medium frequency real impedance input features. Literature indicates that this frequency range may be disproportionately affected by differences in sensor coatings and tissue properties, depending on the specific sensor design. In general,
Base Calibration Factor=c1×ln(real128)+c2,
where real128 is the real component of the 128 Hz frequency input and c1 and c2 are experimentally determined calibration coefficients that vary across sensor lots. For example, in one preferred embodiment, c1 may be 3.7 mg/dL/nA/ohm, and c2 may be −26.4 mg/dL/nA.
The foreign body response correction was done through high frequency impedance adjustments, as discovered through analysis of post-explant sensors whose performance before and after implantation were compared. The theory was also based on literature studies of various sensor chemistries. Specifically
Foreign body response=c1×eimag1000×c
where imag1000 is the imaginary 1000 Hz frequency input and c1, c2 and c3 are experimentally determined calibration coefficients. In one preferred embodiment, e.g., c1 may be −1.4, c2 may be 0.008, and, c3 may be 1.3. In embodiments, the maximum indicated adjustment due to foreign body response may be 30%.
The oxygen response adjustment was primarily by changes to the counter voltage values. The rationale for this is that hydrogen peroxide concentration gradient is affected by oxygen gradient and the counter voltage is a proxy for oxygen concentration. Specifically
Oxygen response=c1×Vcntr2+c2×Vcntr+c3,
where Vcntr is the counter voltage input and c1, c2 and c3 are experimentally determined calibration coefficients. In one preferred embodiment, c1 may be 2.0/V, c2 may be 2.0, and c3 may be 2.0V. In embodiments, the maximum adjustment due to foreign body response may be 12%.
Sensor current dips and hypoglycemia correction was driven by adjustments to long term sensor current trends. The rationale for this is that unexpected dips in sensor current (dips not apparent from sensor current trends) may be due to hypoglycemia. Specifically
Dip adjustment=c1×eIsigTrend×c
where IsigTrend is the long-term sensor current trend input and c1, c2 and c3 are experimentally determined calibration coefficients that vary slightly across sensor lots. In one preferred embodiment, c1 may be 4.68, c2 may be −0.21, and c3 may be 0.97. In embodiments, the long-term sensor current trend is variously implemented, e.g., as 6, 12, 18, 24, and 48-hour average sensor current values. In embodiments, the input feature is represented by outputs of Butterworth filtering of sensor current values over, e.g., 24 and 48-hour windows. In embodiments, the maximum adjustment due to current dip response may be 5%.
Upon sensor insertion the sensor is stabilized for wear. As previously discussed, the rate at which a sensor stabilizes is affected by sensor chemistry, insertion location, physiology, and insertion process, amongst other factors. In embodiments of the analytical optimization SG calculation model, the stabilization of the sensor is estimated and corrected for chiefly by the counter voltage input. The rationale is that platinum oxidation and capacitance relationship plays key roles both in first day performance and counter voltage values. Specifically
Stabilization response=c1×Vcntr+c2,
where Vcntr is the counter voltage input and c1 and c2 are experimentally determined calibration coefficients. In one preferred embodiment, e.g., c1 may be 0.48/V, and c2 may be 1.24. The maximum adjustment due to foreign body response was set at 5% in preferred embodiments.
The stabilization time adjustment was driven by implant age based on studies of in-vivo data and confirmed through in-vitro studies. Specifically
Stabilization time adjustment=c1×eage×c
where age is the sensor age, which in a preferred embodiment, is measured from the completion of sensor warm-up. In another embodiment, the sensor age may be measured from sensor insertion. c1, c2 and c3 are experimentally determined calibration coefficients. In one preferred embodiment, c1 may be −5.4, c2 may be −0.50, and c3 may be −1.5 nA. In one embodiment, the value of this term was not found to be limited, though a limit of 50% was imposed.
The non-linear sensor response was driven by sensor current values and sensor age as backed by in-vivo data studies and confirmed from in-vitro observations. Specifically
Non linear response adjustment=c1+(age×c2+c3)×Isig,
where Isig is the sensor current, age is sensor age and c1, c2, and c3 are experimentally determined calibration coefficients. In one preferred embodiment, c1 may be 13.8 nA, c2 may be −0.1/day, and c3 may be −0.7. As with the stabilization time adjustment, embodiments utilized various measures of sensor age including: time from sensor insertion, time from sensor warm up and time from the completion of sensor calibration. In one embodiment, the sensor current may be filtered sensor current values, with the adjustment limited to values between −1 nA and 10 nA.
While the description above refers to particular embodiments of the present inventions, it will be understood that many modifications may be made without departing from the spirit thereof. Additional steps and changes to the order of the algorithms can be made while still performing the key teachings of the present inventions. Thus, the accompanying claims are intended to cover such modifications as would fall within the true scope and spirit of the present inventions. The presently disclosed embodiments are, therefore, to be considered in all respects as illustrative and not restrictive, the scope of the inventions being indicated by the appended claims rather than the foregoing description. All changes that come within the meaning of, and range of, equivalency of the claims are intended to be embraced therein.
It should be understood that various aspects disclosed herein may be combined in different combinations than the combinations specifically presented in the description and accompanying drawings. It should also be understood that, depending on the example, certain acts or events of any of the processes or methods described herein may be performed in a different sequence, may be added, merged, or left out altogether (e.g., all described acts or events may not be necessary to carry out the techniques). In addition, while certain aspects of this disclosure are described as being performed by a single module or unit for purposes of clarity, it should be understood that the techniques of this disclosure may be performed by a combination of units or modules associated with, for example, a medical device.
In one or more examples, the described techniques may be implemented in hardware, software, firmware, or any combination thereof. If implemented in software, the functions may be stored as one or more instructions or code on a computer-readable medium and executed by a hardware-based processing unit. Computer-readable media may include non-transitory computer-readable media, which corresponds to a tangible medium such as data storage media (e.g., RAM, ROM, EEPROM, flash memory, or any other medium that can be used to store desired program code in the form of instructions or data structures and that can be accessed by a computer).
Instructions may be executed by one or more processors, such as one or more digital signal processors (DSPs), general purpose microprocessors, application specific integrated circuits (ASICs), field programmable logic arrays (FPGAs), or other equivalent integrated or discrete logic circuitry. Accordingly, the term “processor” as used herein may refer to any of the foregoing structure or any other physical structure suitable for implementation of the described techniques. Also, the techniques could be fully implemented in one or more circuits or logic elements.
Ajemba, Peter, Nogueira, Keith, Nishida, Jeffrey, Tsai, Andy Y.
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